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Year 2024, Volume: 10 Issue: 20, 137 - 148, 31.10.2024
https://doi.org/10.48121/jihsam.1533583

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References

  • Abdullah, R., & Fakieh, B. (2020). HealthCare Employees' Perceptions of the Use of Artificial Intelligence Applications: Survey Study. Journal of medical Internet research, 22(5), e17620. https://doi.org/10.2196/17620
  • Ahmed, H., Younis, E.M., Hendawi, A.M., & Ali, A.A. (2020). Heart disease identification from patients social posts, machine learning solutions on Spark. Future Gener.Comput. Syst., 111,714-722.
  • Al-Antari, M. A., Hua, C. H., Bang, J., & Lee, S. (2021). "Fast deep learning computer-aided diagnosis of COVID-19 based on digital chest x-ray images".Applied intelligence (Dordrecht, Netherlands), 51(5),2890-2907. https://doi.org/10.1007/s10489-020-02076-6
  • Alanazi, S. A., Kamruzzaman, M. M., Alruwaili, M., Alshammari, N., Alqahtani, S. A., & Karime, A. (2020). Measuring and Preventing COVID-19 Using the SIR Model and Machine Learning in Smart Health Care. Journal of Healthcare Engineering, 2020,8857346. https://doi.org/10.1155/2020/8857346
  • Allam, Z.; Dey, Gourav; Jones, David (2020). Artificial Intelligence (AI) Provided Early Detection of the Coronavirus (COVID-19) in China and Will Influence Future Urban Health Policy Internationally. Deakin University. Journal contribution. https://hdl.handle.net/10779/DRO/DU:20709592.v2
  • Almalki, Y. E., Qayyum, A., Irfan, M., Haider, N., Glowacz, A., Alshehri, F. M., Alduraibi, S.K., Alshamrani, K., Alkhalik Basha, M. A., Alduraibi, A., Saeed, M. K., & Rahman, S. (2021).A Novel Method for COVID-19 Diagnosis Using Artificial Intelligence in Chest X-ray Images. Healthcare (Basel, Switzerland), 9(5), 522. https://doi.org/10.3390/healthcare9050522
  • Almalki, Y. E., Qayyum, A., Irfan, M., Haider, N., Glowacz, A., Alshehri, F. M., Alduraibi, S.K., Alshamrani, K., Alkhalik Basha, M. A., Alduraibi, A., Saeed, M. K., & Rahman, S. (2021).A Novel Method for COVID-19 Diagnosis Using Artificial Intelligence in Chest X-ray Images. Healthcare (Basel, Switzerland), 9(5), 522. https://doi.org/10.3390/healthcare9050522
  • Alsubai, S., Alqahtani, A., Sha, M., Abbas, S., Gregus, M., & Furda, R. (2023). Automated Cognitive Health Assessment Based on Daily Life Functional Activities. Computational intelligence and neuroscience, 2023, 5684914. https://doi.org/10.1155/2023/5684914
  • Altan, A., & Karasu, S. (2020). Recognition of COVID-19 disease from X-ray images by hybrid model consisting of 2D curvelet transform, chaotic salp swarm algorithm and deep learning technique. Chaos, solitons,and fractals, 140, 110071. https://doi.org/10.1016/j.chaos.2020.110071
  • Bhattacharya, S., Maddikunta, P. K., Pham, Q.-V., Gadekallu, T. R., Krishnan, S. S., Chowdhary, C. L., . . . Piran, M. J. (2021). Deep learning and medical image processing for coronavirus (COVID-19) pandemic: A survey. Sustainable Cities and Society, 65, 102589. https://doi.org/10.1016/j.scs.2020.102589
  • Bica, I., Alaa, A. M., Lambert, C., & van der Schaar, M. (2021). From Real-World PatientData to Individualized Treatment Effects Using Machine Learning: Current and Future Methods to Address Underlying Challenges. Clinical pharmacology and therapeutics, 109(1), 87-100. https://doi.org/10.1002/cpt.1907
  • Bickman, L. (2020). Improving Mental Health Services: A 50-Year Journey from Randomized Experiments to Artificial Intelligence and Precision MentalHealth. Administration and Policy in Mental Health and Mental Health Services Research, 47(5), 795–843. https://doi.org/10.1007/s10488-020-01065-8
  • Broadus, R. N. (1987). Toward A Definition of "Bibliometrics". Scientometrics, 12(5-6), pp. 373–379.
  • Brugnara, G., Neuberger, U., Mahmutoglu, M. A., Foltyn,M., Herweh, C., Nagel, S., Schönenberger, S., Heiland, S., Ulfert, C., Ringleb, P. A., Bendszus, M., Möhlenbruch, M. A., Pfaff, J. A. R., & Vollmuth, P. (2020). Multimodal Predictive Modeling of Endovascular Treatment Outcome for Acute Ischemic StrokeUsing Machine-Learning. Stroke, 51(12), 3541-3551. https://doi.org/10.1161/STROKEAHA.120.030287
  • Brunese, L., Mercaldo, F., Reginelli, A., & Santone,A. (2020). Explainable Deep Learning for Pulmonary Disease and Coronavirus COVID-19 Detection from X-rays. Computer methods and programs in biomedicine, 196, 105608. https://doi.org/10.1016/j.cmpb.2020.105608
  • Chan, H. P., Hadjiiski, L. M., & Samala, R. K. (2020). Computer-aided diagnosis in the era of deep learning. Medical physics, 47(5), e218-e227. https://doi.org/10.1002/mp.13764
  • Chan, L., Nadkarni, G. N., Fleming, F., McCullough, J. R., Connolly, P., Mosoyan, G., El Salem, F., Kattan, M. W., Vassalotti, J. A., Murphy, B., Donovan, M. J., Coca, S. G., & Damrauer, S. M. (2021). Derivation and validation of a learning risk score using biomarker and electronic patientdata to predict progression of diabetic kidneydisease. Diabetologia, 64(7),1504-1515. https://doi.org/10.1007/s00125-021-05444-0
  • Chekroud, A. M., Bondar, J., Delgadillo, J., Doherty, G., Wasil, A., Fokkema, M., Cohen, Z., Belgrave, D., DeRubeis, R., Iniesta, R., Dwyer, D., & Choi, K. (2021). The promise of machine learning in predicting treatment outcomes in psychiatry. World Psychiatry: Official Journal of the World Psychiatric Association (WPA), 20(2), 154-170. https://doi.org/10.1002/wps.20882
  • Chien, I., Enrique, A., Palacios, J., Regan, T., Keegan, D., Carter, D., Tschiatschek, S., Nori, A., Thieme, A., Richards, D., Doherty, G., & Belgrave,D. (2020). A Machine Learning Approach to Understanding Patterns of Engagement With Internet-Delivered Mental Health Interventions. JAMA Network open,3(7), e2010791. https://doi.org/10.1001/jamanetworkopen.2020.10791
  • Dansana, D., Kumar, R., Bhattacharjee, A., Hemanth, D. J., Gupta, D., Khanna, A., & Castillo, O. (2023). Early diagnosis of COVID-19-affected patients based on X-ray and computed tomography images using a deep learning algorithm. Soft computing, 27(5),2635-2643. https://doi.org/10.1007/s00500-020-05275-y
  • Delafiori, J., Navarro, L. C., Siciliano, R. F., de Melo, G. C., Busanello, E. N. B., Nicolau, J.C., Sales, ... Catharino, R. R. (2021). Covid-19 Automated Diagnosis and Risk Assessment through Metabolomics and machine learning. Analytical chemistry, 93(4), 2471–2479. https://doi.org/10.1021/acs.analchem.0c04497
  • Dilsizian, S. E., & Siegel, E. L. (2014). Artificial intelligence in medicine and cardiac ımaging: harnessing big data and advanced computing to provide personalized medical diagnosis and treatment. Current Cardiology Reports, 16(1), 1-8. https://doi.org/10.1007/s11886-013-0441-8
  • El Asnaoui, K., & Chawki, Y. (2021). Using X-ray images and deep learning for automated detection of coronavirus disease.Journal of biomolecular structure& dynamics, 39(10), 3615-3626. https://doi.org/10.1080/07391102.2020.1767212
  • Elaziz, M. A., Hosny, K. M., Salah, A., Darwish, M. M., Lu, S., & Sahlol, A. T. (2020). New machine learning method for image-based diagnosis of COVID-19. PloS one, 15(6), e0235187. https://doi.org/10.1371/journal.pone.0235187
  • Ellegaard, O., & Wallin, J. A. (2015). The Bibliometric Analysis of Scholarly Production: How Great is the Impact?Scientometrics, 105(3), 1809-1831. https://doi.org/10.1007/s11192-015-1645-z
  • Emikönel, S., Türkmen, İ., & Tekin, E. (2024). Use of Artificial Intelligence in Radiology: Review of the Last 10 Years (2014-2023). 6. International Mediterranean Scientific Research Congress Full Texts Book, Volume-2 (s. 141-157). Rome, Italy: IKSAD Publishing.
  • Esteva, A., Kuprel, B., Novoa, R. A., Ko, J., Swetter, S. M., Blau, H. M., & Thrun, S. (2017). Dermatologist-level Classification of Skin Cancer with Deep NeuralNetworks. Nature, 542, 115-118. https://doi.org/10.1038/nature21056
  • Fan, W., Liu, J., Zhu, S. et al. Investigating the impacting factors for healthcare professionals to adopt an artificial intelligence-based medical diagnosis support system (AIMDSS). Ann Oper Res 294, 567-592 (2020). https://doi.org/10.1007/s10479-018- 2818-y
  • Fletcher, R. R., Nakashima, A., & Olubeko, O. (2021). Addressing Fairness, Bias, and Appropriate Use of Artificial Intelligence and Machine Learning in Global Health. Frontiers in artificial intelligence, p. 3, 561802. https://doi.org/10.3389/frai.2020.561802
  • Ghosh, P., Azam, S., Jonkman, M., Karim, A., Shamrat, F.J., Ignatious, E., Shultana, S., Beeravolu, A.R., & De Boer, F. (2021). Efficient Prediction of Cardiovascular Disease Using Machine Learning Algorithms With Relief and LASSO Feature Selection Techniques. IEEE Access, p. 9, 19304–19326.
  • Gradus, J. L., Rosellini, A. J., Horváth-Puhó, E., Street, A. E., Galatzer-Levy, I., Jiang, T., Lash, T. L., & Sørensen, H. T. (2020). Prediction of Sex-Specific Suicide Risk Using Machine Learning and Single-Payer Health Care Registry Data From Denmark.JAMA psychiatry, 77(1),25-34. https://doi.org/10.1001/jamapsychiatry.2019.2905
  • Habli, I., Lawton, T., & Porter, Z. (2020). Artificial intelligence in health care: accountability and safety. Bulletin of the World Health Organization, 98(4), 251-256. https://doi.org/10.2471/BLT.19.237487
  • Hernandez-Boussard, T., Bozkurt, S., Ioannidis, J. P. A., & Shah, N. H. (2020). MINIMAR (MINimum Information for Medical AI Reporting): Developing reporting standards forartificial intelligence in health care.Journal of the American Medical Informatics Association: JAMIA, 27(12), 2011-2015. https://doi.org/10.1093/jamia/ocaa088
  • Jacobs, M., Pradier, M. F., McCoy, T. H., Jr, Perlis, R. H., Doshi-Velez, F., & Gajos, K. Z. (2021). How machine-learning recommendations influence clinician treatment selections: the example of the antidepressant selection. Translational psychiatry, 11(1), 108. https://doi.org/10.1038/s41398-021-01224-x
  • Jamshidi, M. B., Lalbakhsh, A., Talla, J., Peroutka, Z., Hadjilooei, F., Lalbakhsh, P., Jamshidi, M., Spada, L., Mirmozafari, M., Dehghani, M., Sabet, A., Roshani, S., Roshani, S., Bayat-Makou, N., Mohamadzade, B., Malek, Z., Jamshidi, A., Kiani, S., Hashemi- Dezaki, H., & Mohyuddin, W. (2020). Artificial Intelligence and COVID-19: Deep Learning Approaches for Diagnosis and Treatment. IEEE Access: practical innovations, open solutions, 8, 109581–109595. https://doi.org/10.1109/ACCESS.2020.3001973
  • Kaplan, A., & Haenlein, M. (2019). Siri, Siri, in my hand: Who's the fairest in the land? On the interpretations, illustrations, and implications of artificial intelligence. Business Horizons,62(1), 15-25. https://doi.org/10.1016/j.bushor.2018.08.004
  • Karar, M. E., Hemdan, E. E., & Shouman, M. A. (2021). Cascaded deep learning classifiers for computer-aided diagnosis of COVID-19 and pneumonia diseases in X-ray scans. Complex & intelligent systems, 7(1), 235-247. https://doi.org/10.1007/s40747-020- 00199-4
  • Khamparia A, Singh PK, Rani P, Samanta D, Khanna A, Bhushan B. An Internet of Health things-driven deep learning framework for detecting and classifying skin cancer using transfer learning.Trans Emerging Tel Tech.2021; 32:e3963. https://doi.org/10.1002/ett.3963
  • Khamparia, A., Gupta, D., de Albuquerque, V.H.C. et al. Internet of Health things-driven deep learning system for detection and classification of cervical cells using transfer learning. J Supercomput 76,8590-8608 (2020). https://doi.org/10.1007/s11227-020-03159-4
  • Khan, F.A., Majidulla, A., Tavaziva, G., Nazish, A., Abidi, S.K., Benedetti, A., Menzies, D., Johnston, J.C., Khan, A.J., & Saeed, S. (2020). Chest X-ray analysis with deep learning- Based software as a triage test for pulmonary tuberculosis: a prospective study of diagnostic accuracy for culture-confirmed disease. The Lancet. Digital health, 2 11, e573-e581.
  • Kim, J., Lee, J., Park, E., & Han, J. (2020). A deep learning model for detecting mental illness from user content on social media. Scientific reports, 10(1),11846. https://doi.org/10.1038/s41598-020-68764-y Krittanawong, C., Zhang, H., Wang, Z., Aydar, M., & Kitai, T. (2017). Artificial Intelligence in Precision Cardiovascular Medicine. Journal of the American College of Cardiology, 69(21), 2657–2664. https://doi.org/10.1016/j.jacc.2017.03.571
  • Kwekha-Rashid, A. S., Abduljabbar, H. N., & Alhayani, B. (2023). Coronavirus disease (COVID-19) cases analysis using machine-learning applications. Applied nanoscience, 13(3),2013-2025. https://doi.org/10.1007/s13204-021-01868-7
  • Lauritsen, S. M., Kalør, M. E., Kongsgaard, E. L., Lauritsen, K. M., Jørgensen, M. J., Lange, J., & Thiesson,B. (2020). Early detection of sepsis utilizing deep learning on electronic health record event sequences. Artificial intelligence in medicine, 104, 101820. https://doi.org/10.1016/j.artmed.2020.101820
  • Lauritsen, S. M., Kristensen, M., Olsen, M. V., Larsen, M. S., Lauritsen, K. M., Jørgensen, M.J., Lange, J., & Thiesson, B. (2020). Explainable artificial intelligence model to predict acute critical illness from electronic health records. Nature communications, 11(1), 3852. https://doi.org/10.1038/s41467-020-17431-x
  • LeCun, Y., Bengio, Y., & Hinton, G. (2015). Deep Learning. Nature, 521(7553), 436–444. https://doi.org/10.1038/nature14539
  • Liu, L., Xu, J., Huan, Y., Zou, Z., Yeh, S. C., & Zheng, L. R. (2020). A Smart Dental Health- IoT Platform Based on Intelligent Hardware, Deep Learning, and Mobile Terminal. IEEE Journal of Biomedical and Health Informatics, 24(3), 898-906. https://doi.org/10.1109/JBHI.2019.2919916
  • Liu, M., Zhang, J., Lian, C., & Shen, D. (2020). Weakly Supervised Deep Learning for Brain Disease Prognosis Using MRI and Incomplete Clinical Scores. IEEE transactions on cybernetics, 50(7), 3381–3392. https://doi.org/10.1109/TCYB.2019.2904186
  • Maniruzzaman, M., Rahman,M. J., Ahammed, B., & Abedin, M. M. (2020).Classification and prediction of diabetes disease using machine learning paradigm. Health information science and systems, 8(1), 7. https://doi.org/10.1007/s13755-019-0095-z
  • Manz CR, Parikh RB, Small DS, et al. Effect of Integrating Machine Learning Mortality Estimates With Behavioral Nudges to Clinicians on Serious Illness Conversations Among Patients With Cancer: A Stepped-Wedge Cluster Randomized Clinical Trial. JAMA Oncol. 2020;6(12):e204759. https://doi.org/10.1001/jamaoncol.2020.4759
  • Markus, A.F., Kors, J.A., & Rijnbeek, P.R. (2020). The role of explainability in creating trustworthy artificial intelligence for health care: a comprehensive survey of the terminology, design choices, and evaluation strategies. Journal of biomedical informatics, 103655.
  • Martínez-Lopez, F. J., Merigo, J. M., Valenzuela-Fernández, L., & Nicolás,C. (2018). Fifty years of the European Journal of Marketing: A Bibliometric Analysis.European Journal of Marketing, 52(1/2), 439-468. https://doi.org/10.1108/EJM-11-2017-0853
  • McDermott, M. B. A., Wang, S., Marinsek, N., Ranganath, R., Foschini, L., & Ghassemi, M. (2021). Reproducibility in machine learning for health research: Still a ways to go. Science translational medicine, 13(586), eabb1655. https://doi.org/10.1126/scitranslmed.abb1655
  • Mehrabi, N., Morstatter, F., Saxena, N., Lerman, K., & Galstyan, A. (2021). A Survey on Biasand Fairness in Machine Learning.ACM Computing Surveys, 54(6), 1-35. https://doi.org/10.1145/3457607
  • Mohammed, M.A., Abdulkareem, K.H., Garcia-Zapirain, B., Mostafa, S.A., Maashi, M.S., Al-Waisy, A.S., Subhi, M.A., Mutlag, A.A., & Le, D. (2021). A Comprehensive Investigation of Machine Learning Feature Extraction and Classification Methods for Automated Diagnosis of COVID-19 Based on X-Ray Images. Computers, Materials & Continua.
  • Mori, Y., Kudo, S. E., East, J. E., Rastogi, A., Bretthauer, M., Misawa, M., Sekiguchi, M., Matsuda, T., Saito, Y., Ikematsu, H., Hotta, K., Ohtsuka, K., Kudo, T., & Mori, K. (2020). Cost savings in colonoscopy with artificial intelligence-aided polyp diagnosis: an add-on analysis of a clinical trial (with video). Gastrointestinal Endoscopy, 92(4),905-911.e1. https://doi.org/10.1016/j.gie.2020.03.3759
  • Murdoch B. (2021). Privacy and artificial intelligence: challenges for protecting health information in a new era. BMC medicalethics, 22(1),122. https://doi.org/10.1186/s12910-021-00687-3 Nemesure, M. D., Heinz, M. V., Huang, R., & Jacobson, N. C. (2021). Predictive modelling of depression and anxiety using electronic health records and a novel machine learning approach with artificial intelligence. Scientific reports, 11(1), 1980. https://doi.org/10.1038/s41598-021-81368-4
  • Novelli, C., Taddeo, M., & Floridi , L. (2023). Accountability in Artificial Intelligence: What it is and how it works. AI & Society, 1-12. https://doi.org/10.1007/s00146-023- 01635-y
  • Park, J. H., Cho, H. E., Kim, J. H., Wall, M. M., Stern, Y., Lim, H., Yoo, S., Kim, H. S., & Cha, J. (2020). Machine learning prediction of incidence of Alzheimer's disease using large-scale administrative health data. NPJ digitalmedicine, 3, 46. https://doi.org/10.1038/s41746-020-0256-0
  • Qin, J., Chen, L., Liu, Y., Liu, C., Feng, C., & Chen, B. (2023). A Machine Learning Methodology for Diagnosing ChronicKidney Disease. IEEE Access,8, 20991-21002.
  • Rankin, D., Black, M., Bond, R., Wallace, J., Mulvenna, M., & Epelde, G. (2020). Reliability of Supervised Machine Learning Using Synthetic Data in Health Care: Model to Preserve Privacy for Data Sharing. JMIR medicalinformatics, 8(7), e18910. https://doi.org/10.2196/18910
  • Roma, P., Monaro, M., Muzi, L., Colasanti, M., Ricci, E., Biondi, S., Napoli, C., Ferracuti, S., &Mazza, C. (2020). How to Improve Compliance with Protective Health Measures During the COVID-19 Outbreak: Testing a Moderated Mediation Model and Machine Learning Algorithms. International Journal of environmental research and public health, 17(19),7252. https://doi.org/10.3390/ijerph17197252
  • Seyyed-Kalantari, L., Zhang, H., McDermott, M. B., Chen, I. Y., & Ghassemi, M. (2021). Underdiagnosis bias of artificial intelligence algorithms applied to chest radiographs in under-served patient populations. Nature Medicine, 27(12), 2176- 2182. https://doi.org/10.1038/s41591-021-01595-0
  • Song, Y., Zheng, S., Li, L., Zhang, X., Zhang, X., Huang, Z., Chen, J., Wang, R., Zhao, H., Chong, Y., Shen, J., Zha, Y., & Yang, Y. (2021). Deep Learning Enables Accurate Diagnosis of Novel Coronavirus (COVID-19) With CT Images. IEEE/ACM transactions on computational biology and bioinformatics, 18(6), 2775–2780. https://doi.org/10.1109/TCBB.2021.3065361
  • Souri, A., Ghafour,M.Y., Ahmed, A.M., Safara, F., Yamini, A., & Hoseyninezhad, M. (2020). A new machine learning-based healthcare monitoring model for student's condition diagnosis in Internet of Things environment. Soft Computing, 24, 17111 - 17121.
  • Srivastava, A., Jain, S., Miranda,R., Patil, S., Pandya, S., & Kotecha,K. (2021). Deep learning-based respiratory sound analysis for detection of chronic obstructive pulmonary disease.PeerJ. Computer science, 7, e369. https://doi.org/10.7717/peerj-cs.369
  • Tang, A., Tam, R., Cadrin-Chenevert, A., Guest, W., Chong, J., Barfett, J., . . . Cicero, M. D. (2018). Canadian Association of Radiologists white paper on artificial intelligence in radiology. Canadian Association of Radiologists Journal, 69(2), 120-135. https://doi.org/10.1016/j.carj.2018.02.002.
  • Tekin, E., & Emikönel, S. (2023). Comparison of Mobile Health Application Examples in Turkey and the World. In U. Akküçük, Handbook of Research on Quality and Competitiveness in the Healthcare Services Sector (pp.223-236). IGI Global. https://doi.org/10.4018/978-1-6684-8103-5.ch013
  • Tiwari, P., Colborn, K. L., Smith, D. E., Xing, F., Ghosh, D., & Rosenberg, M. A. (2020). Assessment of a Machine Learning Model Applied to Harmonized Electronic Health Record Data for the Prediction of Incident Atrial Fibrillation. JAMA networkopen, 3(1), e1919396. https://doi.org/10.1001/jamanetworkopen.2019.19396
  • Tuli, S., Basumatary, N., Gill, S. S., Kahani, M., Arya, R. C., Wander, G. S., & Buyya, R. (2020). HealthFog: An ensemble deep learning-based Smart Healthcare System for Automatic Diagnosis of Heart Diseases in Integrated IoT and Fog Computing Environments. Future Generation ComputerSystems, 104, 187-200. https://doi.org/10.1016/J.FUTURE.2019.10.043
  • Türkmen, İ., & Özkara, B. (2001). Evaluation of Hospital Information Management System with Information Systems Success Model. Journal of Information Technologies, 14(4), 403-410. https://doi.org/10.17671/gazibtd.830213
  • Vaid, A., Jaladanki,S. K., Xu, J., Teng, S., Kumar, A., Lee, S., Somani, S., Paranjpe,I., De Freitas, J. K., Wanyan, T., Johnson, K. W, Bicak, M., Klang, E., Kwon, Y. J., Costa, A., Zhao, S., Miotto, R., Charney, A. W., Böttinger, E., Fayad, Z. A., ... Glicksberg, B. S. (2021). FederatedLearning of Electronic Health Records to Improve MortalityPrediction in Hospitalized Patients with COVID-19: Machine Learning Approach. JMIR medical informatics, 9(1), e24207. https://doi.org/10.2196/24207
  • Vayena, E., Blasimme, A., & Cohen, I. G. (2018). Machine Learning in Medicine: Addressing Ethical Challenges. Plos Medicine,15(11), e1002689. https://doi.org/10.1371/journal.pmed.1002689
  • Vellido, A. Interpretability and visualization are important in machine learning for applications in medicine and health care. Neural Comput & Applic 32, 18069–18083 (2020). https://doi.org/10.1007/s00521-019-04051-w
  • Wang, D., Mo, J., Zhou, G., Xu, L., & Liu, Y. (2020). An efficient mixture of deep and machine learning models for COVID-19 diagnosis in chest X-ray images. PloS one, 15(11), e0242535. https://doi.org/10.1371/journal.pone.0242535
  • Wang, D., Mo, J., Zhou, G., Xu, L., & Liu, Y. (2020). An efficient mixture of deep and machine learning models for COVID-19 diagnosis in chest X-ray images. PloS one, 15(11), e0242535. https://doi.org/10.1371/journal.pone.0242535
  • Wang, W., & Siau, K. (2019). Artificial Intelligence, Machine Learning, Automation, Robotics, Future of Work and Future of Humanity. Journal of Database Management, 30(1), 61- 79. https://doi.org/10.4018/jdm.2019010104
  • Xie, C., Zhuang, X. X., Niu, Z., Ai, R., Lautrup, S., Zheng, S., Jiang, Y., Han, R., Gupta, T. S., Cao, S., Lagartos-Donate, M. J., Cai, C. Z., Xie, L. M., Caponio,D., Wang, W. W., Schmauck-Medina, T., Zhang,J., Wang, H. L., Lou, G., Xiao,X., ... Fang, E. F. (2022). Amelioration of Alzheimer's disease pathology by mitophagy inducers identified via machine learning and a cross-species workflow. Nature Biomedical Engineering,6(1), 76-93. https://doi.org/10.1038/s41551-021-00819-5
  • Ye, J., Woods, D., Jordan, N., & Starren, J. (2024). The Role of Artificial Intelligence for the Application of Integrating Electronic Health Records and Patient-Generated Data in Clinical Decision Support. AMIA Jointt Summits Translational Science Proceedings, pp. 459–467.
  • Zhao, Y., Da, J., & Yan, J. (2021). Detecting health misinformation in online health communities: Incorporating behavioural features into machine learning-based approaches. Inf. Process.Manag., p. 58, 102390.
  • Zoabi, Y., Deri-Rozov, S., & Shomron, N. (2021). Machine learning-based prediction of COVID-19 diagnosis based on symptoms.NPJ digital medicine, 4(1), 3. https://doi.org/10.1038/s41746-020-00372-6

Bibliometric and Content Analysis of Articles on Artificial Intelligence in Healthcare

Year 2024, Volume: 10 Issue: 20, 137 - 148, 31.10.2024
https://doi.org/10.48121/jihsam.1533583

Abstract

The use of artificial intelligence in the healthcare sector is becoming widespread for reasons such as analyzing digital patient data, including it in decision-making processes, improving the quality of healthcare services, and providing cost, time, and access advantages. This study aims to evaluate published articles on bibliometric indicators and the use of artificial intelligence in the healthcare sector and examine the content of the most cited articles. Articles about artificial intelligence in the health sector in the Web of Science database were included in the study using the criteria of “keyword, publication year, and publication language”. The research covers 2,680 articles published in English by 14,195 authors from 106 countries in 1084 journals between 2020-2024. 4,671 different keywords were used in the published articles. The country that published the most was “USA”, the journal was “Journal of Medical Internet Research”, the author was “Meng Ji”, and the most cited author was “Weihua Li”. The 55 most cited (≥50) articles focused on themes related to “diagnosis of COVID-19 disease”, “diagnosis of diseases”, “detection and classification of cancerous cells”, “identification of disease risk factors and disease prediction”, “prediction of treatment outcomes”, “prediction of disease course”, “personalized treatment recommendations”, “decision-making processes”, “ethical considerations, risks, and responsibilities”. With the COVID-19 pandemic, it is seen that the number of articles on artificial intelligence in the healthcare sector has increased exponentially. In the research, articles related to artificial intelligence in the health sector were examined, and a framework was created for researchers by revealing the most publishing countries, journals, authors, most cited authors, and keywords that were used the most.

References

  • Abdullah, R., & Fakieh, B. (2020). HealthCare Employees' Perceptions of the Use of Artificial Intelligence Applications: Survey Study. Journal of medical Internet research, 22(5), e17620. https://doi.org/10.2196/17620
  • Ahmed, H., Younis, E.M., Hendawi, A.M., & Ali, A.A. (2020). Heart disease identification from patients social posts, machine learning solutions on Spark. Future Gener.Comput. Syst., 111,714-722.
  • Al-Antari, M. A., Hua, C. H., Bang, J., & Lee, S. (2021). "Fast deep learning computer-aided diagnosis of COVID-19 based on digital chest x-ray images".Applied intelligence (Dordrecht, Netherlands), 51(5),2890-2907. https://doi.org/10.1007/s10489-020-02076-6
  • Alanazi, S. A., Kamruzzaman, M. M., Alruwaili, M., Alshammari, N., Alqahtani, S. A., & Karime, A. (2020). Measuring and Preventing COVID-19 Using the SIR Model and Machine Learning in Smart Health Care. Journal of Healthcare Engineering, 2020,8857346. https://doi.org/10.1155/2020/8857346
  • Allam, Z.; Dey, Gourav; Jones, David (2020). Artificial Intelligence (AI) Provided Early Detection of the Coronavirus (COVID-19) in China and Will Influence Future Urban Health Policy Internationally. Deakin University. Journal contribution. https://hdl.handle.net/10779/DRO/DU:20709592.v2
  • Almalki, Y. E., Qayyum, A., Irfan, M., Haider, N., Glowacz, A., Alshehri, F. M., Alduraibi, S.K., Alshamrani, K., Alkhalik Basha, M. A., Alduraibi, A., Saeed, M. K., & Rahman, S. (2021).A Novel Method for COVID-19 Diagnosis Using Artificial Intelligence in Chest X-ray Images. Healthcare (Basel, Switzerland), 9(5), 522. https://doi.org/10.3390/healthcare9050522
  • Almalki, Y. E., Qayyum, A., Irfan, M., Haider, N., Glowacz, A., Alshehri, F. M., Alduraibi, S.K., Alshamrani, K., Alkhalik Basha, M. A., Alduraibi, A., Saeed, M. K., & Rahman, S. (2021).A Novel Method for COVID-19 Diagnosis Using Artificial Intelligence in Chest X-ray Images. Healthcare (Basel, Switzerland), 9(5), 522. https://doi.org/10.3390/healthcare9050522
  • Alsubai, S., Alqahtani, A., Sha, M., Abbas, S., Gregus, M., & Furda, R. (2023). Automated Cognitive Health Assessment Based on Daily Life Functional Activities. Computational intelligence and neuroscience, 2023, 5684914. https://doi.org/10.1155/2023/5684914
  • Altan, A., & Karasu, S. (2020). Recognition of COVID-19 disease from X-ray images by hybrid model consisting of 2D curvelet transform, chaotic salp swarm algorithm and deep learning technique. Chaos, solitons,and fractals, 140, 110071. https://doi.org/10.1016/j.chaos.2020.110071
  • Bhattacharya, S., Maddikunta, P. K., Pham, Q.-V., Gadekallu, T. R., Krishnan, S. S., Chowdhary, C. L., . . . Piran, M. J. (2021). Deep learning and medical image processing for coronavirus (COVID-19) pandemic: A survey. Sustainable Cities and Society, 65, 102589. https://doi.org/10.1016/j.scs.2020.102589
  • Bica, I., Alaa, A. M., Lambert, C., & van der Schaar, M. (2021). From Real-World PatientData to Individualized Treatment Effects Using Machine Learning: Current and Future Methods to Address Underlying Challenges. Clinical pharmacology and therapeutics, 109(1), 87-100. https://doi.org/10.1002/cpt.1907
  • Bickman, L. (2020). Improving Mental Health Services: A 50-Year Journey from Randomized Experiments to Artificial Intelligence and Precision MentalHealth. Administration and Policy in Mental Health and Mental Health Services Research, 47(5), 795–843. https://doi.org/10.1007/s10488-020-01065-8
  • Broadus, R. N. (1987). Toward A Definition of "Bibliometrics". Scientometrics, 12(5-6), pp. 373–379.
  • Brugnara, G., Neuberger, U., Mahmutoglu, M. A., Foltyn,M., Herweh, C., Nagel, S., Schönenberger, S., Heiland, S., Ulfert, C., Ringleb, P. A., Bendszus, M., Möhlenbruch, M. A., Pfaff, J. A. R., & Vollmuth, P. (2020). Multimodal Predictive Modeling of Endovascular Treatment Outcome for Acute Ischemic StrokeUsing Machine-Learning. Stroke, 51(12), 3541-3551. https://doi.org/10.1161/STROKEAHA.120.030287
  • Brunese, L., Mercaldo, F., Reginelli, A., & Santone,A. (2020). Explainable Deep Learning for Pulmonary Disease and Coronavirus COVID-19 Detection from X-rays. Computer methods and programs in biomedicine, 196, 105608. https://doi.org/10.1016/j.cmpb.2020.105608
  • Chan, H. P., Hadjiiski, L. M., & Samala, R. K. (2020). Computer-aided diagnosis in the era of deep learning. Medical physics, 47(5), e218-e227. https://doi.org/10.1002/mp.13764
  • Chan, L., Nadkarni, G. N., Fleming, F., McCullough, J. R., Connolly, P., Mosoyan, G., El Salem, F., Kattan, M. W., Vassalotti, J. A., Murphy, B., Donovan, M. J., Coca, S. G., & Damrauer, S. M. (2021). Derivation and validation of a learning risk score using biomarker and electronic patientdata to predict progression of diabetic kidneydisease. Diabetologia, 64(7),1504-1515. https://doi.org/10.1007/s00125-021-05444-0
  • Chekroud, A. M., Bondar, J., Delgadillo, J., Doherty, G., Wasil, A., Fokkema, M., Cohen, Z., Belgrave, D., DeRubeis, R., Iniesta, R., Dwyer, D., & Choi, K. (2021). The promise of machine learning in predicting treatment outcomes in psychiatry. World Psychiatry: Official Journal of the World Psychiatric Association (WPA), 20(2), 154-170. https://doi.org/10.1002/wps.20882
  • Chien, I., Enrique, A., Palacios, J., Regan, T., Keegan, D., Carter, D., Tschiatschek, S., Nori, A., Thieme, A., Richards, D., Doherty, G., & Belgrave,D. (2020). A Machine Learning Approach to Understanding Patterns of Engagement With Internet-Delivered Mental Health Interventions. JAMA Network open,3(7), e2010791. https://doi.org/10.1001/jamanetworkopen.2020.10791
  • Dansana, D., Kumar, R., Bhattacharjee, A., Hemanth, D. J., Gupta, D., Khanna, A., & Castillo, O. (2023). Early diagnosis of COVID-19-affected patients based on X-ray and computed tomography images using a deep learning algorithm. Soft computing, 27(5),2635-2643. https://doi.org/10.1007/s00500-020-05275-y
  • Delafiori, J., Navarro, L. C., Siciliano, R. F., de Melo, G. C., Busanello, E. N. B., Nicolau, J.C., Sales, ... Catharino, R. R. (2021). Covid-19 Automated Diagnosis and Risk Assessment through Metabolomics and machine learning. Analytical chemistry, 93(4), 2471–2479. https://doi.org/10.1021/acs.analchem.0c04497
  • Dilsizian, S. E., & Siegel, E. L. (2014). Artificial intelligence in medicine and cardiac ımaging: harnessing big data and advanced computing to provide personalized medical diagnosis and treatment. Current Cardiology Reports, 16(1), 1-8. https://doi.org/10.1007/s11886-013-0441-8
  • El Asnaoui, K., & Chawki, Y. (2021). Using X-ray images and deep learning for automated detection of coronavirus disease.Journal of biomolecular structure& dynamics, 39(10), 3615-3626. https://doi.org/10.1080/07391102.2020.1767212
  • Elaziz, M. A., Hosny, K. M., Salah, A., Darwish, M. M., Lu, S., & Sahlol, A. T. (2020). New machine learning method for image-based diagnosis of COVID-19. PloS one, 15(6), e0235187. https://doi.org/10.1371/journal.pone.0235187
  • Ellegaard, O., & Wallin, J. A. (2015). The Bibliometric Analysis of Scholarly Production: How Great is the Impact?Scientometrics, 105(3), 1809-1831. https://doi.org/10.1007/s11192-015-1645-z
  • Emikönel, S., Türkmen, İ., & Tekin, E. (2024). Use of Artificial Intelligence in Radiology: Review of the Last 10 Years (2014-2023). 6. International Mediterranean Scientific Research Congress Full Texts Book, Volume-2 (s. 141-157). Rome, Italy: IKSAD Publishing.
  • Esteva, A., Kuprel, B., Novoa, R. A., Ko, J., Swetter, S. M., Blau, H. M., & Thrun, S. (2017). Dermatologist-level Classification of Skin Cancer with Deep NeuralNetworks. Nature, 542, 115-118. https://doi.org/10.1038/nature21056
  • Fan, W., Liu, J., Zhu, S. et al. Investigating the impacting factors for healthcare professionals to adopt an artificial intelligence-based medical diagnosis support system (AIMDSS). Ann Oper Res 294, 567-592 (2020). https://doi.org/10.1007/s10479-018- 2818-y
  • Fletcher, R. R., Nakashima, A., & Olubeko, O. (2021). Addressing Fairness, Bias, and Appropriate Use of Artificial Intelligence and Machine Learning in Global Health. Frontiers in artificial intelligence, p. 3, 561802. https://doi.org/10.3389/frai.2020.561802
  • Ghosh, P., Azam, S., Jonkman, M., Karim, A., Shamrat, F.J., Ignatious, E., Shultana, S., Beeravolu, A.R., & De Boer, F. (2021). Efficient Prediction of Cardiovascular Disease Using Machine Learning Algorithms With Relief and LASSO Feature Selection Techniques. IEEE Access, p. 9, 19304–19326.
  • Gradus, J. L., Rosellini, A. J., Horváth-Puhó, E., Street, A. E., Galatzer-Levy, I., Jiang, T., Lash, T. L., & Sørensen, H. T. (2020). Prediction of Sex-Specific Suicide Risk Using Machine Learning and Single-Payer Health Care Registry Data From Denmark.JAMA psychiatry, 77(1),25-34. https://doi.org/10.1001/jamapsychiatry.2019.2905
  • Habli, I., Lawton, T., & Porter, Z. (2020). Artificial intelligence in health care: accountability and safety. Bulletin of the World Health Organization, 98(4), 251-256. https://doi.org/10.2471/BLT.19.237487
  • Hernandez-Boussard, T., Bozkurt, S., Ioannidis, J. P. A., & Shah, N. H. (2020). MINIMAR (MINimum Information for Medical AI Reporting): Developing reporting standards forartificial intelligence in health care.Journal of the American Medical Informatics Association: JAMIA, 27(12), 2011-2015. https://doi.org/10.1093/jamia/ocaa088
  • Jacobs, M., Pradier, M. F., McCoy, T. H., Jr, Perlis, R. H., Doshi-Velez, F., & Gajos, K. Z. (2021). How machine-learning recommendations influence clinician treatment selections: the example of the antidepressant selection. Translational psychiatry, 11(1), 108. https://doi.org/10.1038/s41398-021-01224-x
  • Jamshidi, M. B., Lalbakhsh, A., Talla, J., Peroutka, Z., Hadjilooei, F., Lalbakhsh, P., Jamshidi, M., Spada, L., Mirmozafari, M., Dehghani, M., Sabet, A., Roshani, S., Roshani, S., Bayat-Makou, N., Mohamadzade, B., Malek, Z., Jamshidi, A., Kiani, S., Hashemi- Dezaki, H., & Mohyuddin, W. (2020). Artificial Intelligence and COVID-19: Deep Learning Approaches for Diagnosis and Treatment. IEEE Access: practical innovations, open solutions, 8, 109581–109595. https://doi.org/10.1109/ACCESS.2020.3001973
  • Kaplan, A., & Haenlein, M. (2019). Siri, Siri, in my hand: Who's the fairest in the land? On the interpretations, illustrations, and implications of artificial intelligence. Business Horizons,62(1), 15-25. https://doi.org/10.1016/j.bushor.2018.08.004
  • Karar, M. E., Hemdan, E. E., & Shouman, M. A. (2021). Cascaded deep learning classifiers for computer-aided diagnosis of COVID-19 and pneumonia diseases in X-ray scans. Complex & intelligent systems, 7(1), 235-247. https://doi.org/10.1007/s40747-020- 00199-4
  • Khamparia A, Singh PK, Rani P, Samanta D, Khanna A, Bhushan B. An Internet of Health things-driven deep learning framework for detecting and classifying skin cancer using transfer learning.Trans Emerging Tel Tech.2021; 32:e3963. https://doi.org/10.1002/ett.3963
  • Khamparia, A., Gupta, D., de Albuquerque, V.H.C. et al. Internet of Health things-driven deep learning system for detection and classification of cervical cells using transfer learning. J Supercomput 76,8590-8608 (2020). https://doi.org/10.1007/s11227-020-03159-4
  • Khan, F.A., Majidulla, A., Tavaziva, G., Nazish, A., Abidi, S.K., Benedetti, A., Menzies, D., Johnston, J.C., Khan, A.J., & Saeed, S. (2020). Chest X-ray analysis with deep learning- Based software as a triage test for pulmonary tuberculosis: a prospective study of diagnostic accuracy for culture-confirmed disease. The Lancet. Digital health, 2 11, e573-e581.
  • Kim, J., Lee, J., Park, E., & Han, J. (2020). A deep learning model for detecting mental illness from user content on social media. Scientific reports, 10(1),11846. https://doi.org/10.1038/s41598-020-68764-y Krittanawong, C., Zhang, H., Wang, Z., Aydar, M., & Kitai, T. (2017). Artificial Intelligence in Precision Cardiovascular Medicine. Journal of the American College of Cardiology, 69(21), 2657–2664. https://doi.org/10.1016/j.jacc.2017.03.571
  • Kwekha-Rashid, A. S., Abduljabbar, H. N., & Alhayani, B. (2023). Coronavirus disease (COVID-19) cases analysis using machine-learning applications. Applied nanoscience, 13(3),2013-2025. https://doi.org/10.1007/s13204-021-01868-7
  • Lauritsen, S. M., Kalør, M. E., Kongsgaard, E. L., Lauritsen, K. M., Jørgensen, M. J., Lange, J., & Thiesson,B. (2020). Early detection of sepsis utilizing deep learning on electronic health record event sequences. Artificial intelligence in medicine, 104, 101820. https://doi.org/10.1016/j.artmed.2020.101820
  • Lauritsen, S. M., Kristensen, M., Olsen, M. V., Larsen, M. S., Lauritsen, K. M., Jørgensen, M.J., Lange, J., & Thiesson, B. (2020). Explainable artificial intelligence model to predict acute critical illness from electronic health records. Nature communications, 11(1), 3852. https://doi.org/10.1038/s41467-020-17431-x
  • LeCun, Y., Bengio, Y., & Hinton, G. (2015). Deep Learning. Nature, 521(7553), 436–444. https://doi.org/10.1038/nature14539
  • Liu, L., Xu, J., Huan, Y., Zou, Z., Yeh, S. C., & Zheng, L. R. (2020). A Smart Dental Health- IoT Platform Based on Intelligent Hardware, Deep Learning, and Mobile Terminal. IEEE Journal of Biomedical and Health Informatics, 24(3), 898-906. https://doi.org/10.1109/JBHI.2019.2919916
  • Liu, M., Zhang, J., Lian, C., & Shen, D. (2020). Weakly Supervised Deep Learning for Brain Disease Prognosis Using MRI and Incomplete Clinical Scores. IEEE transactions on cybernetics, 50(7), 3381–3392. https://doi.org/10.1109/TCYB.2019.2904186
  • Maniruzzaman, M., Rahman,M. J., Ahammed, B., & Abedin, M. M. (2020).Classification and prediction of diabetes disease using machine learning paradigm. Health information science and systems, 8(1), 7. https://doi.org/10.1007/s13755-019-0095-z
  • Manz CR, Parikh RB, Small DS, et al. Effect of Integrating Machine Learning Mortality Estimates With Behavioral Nudges to Clinicians on Serious Illness Conversations Among Patients With Cancer: A Stepped-Wedge Cluster Randomized Clinical Trial. JAMA Oncol. 2020;6(12):e204759. https://doi.org/10.1001/jamaoncol.2020.4759
  • Markus, A.F., Kors, J.A., & Rijnbeek, P.R. (2020). The role of explainability in creating trustworthy artificial intelligence for health care: a comprehensive survey of the terminology, design choices, and evaluation strategies. Journal of biomedical informatics, 103655.
  • Martínez-Lopez, F. J., Merigo, J. M., Valenzuela-Fernández, L., & Nicolás,C. (2018). Fifty years of the European Journal of Marketing: A Bibliometric Analysis.European Journal of Marketing, 52(1/2), 439-468. https://doi.org/10.1108/EJM-11-2017-0853
  • McDermott, M. B. A., Wang, S., Marinsek, N., Ranganath, R., Foschini, L., & Ghassemi, M. (2021). Reproducibility in machine learning for health research: Still a ways to go. Science translational medicine, 13(586), eabb1655. https://doi.org/10.1126/scitranslmed.abb1655
  • Mehrabi, N., Morstatter, F., Saxena, N., Lerman, K., & Galstyan, A. (2021). A Survey on Biasand Fairness in Machine Learning.ACM Computing Surveys, 54(6), 1-35. https://doi.org/10.1145/3457607
  • Mohammed, M.A., Abdulkareem, K.H., Garcia-Zapirain, B., Mostafa, S.A., Maashi, M.S., Al-Waisy, A.S., Subhi, M.A., Mutlag, A.A., & Le, D. (2021). A Comprehensive Investigation of Machine Learning Feature Extraction and Classification Methods for Automated Diagnosis of COVID-19 Based on X-Ray Images. Computers, Materials & Continua.
  • Mori, Y., Kudo, S. E., East, J. E., Rastogi, A., Bretthauer, M., Misawa, M., Sekiguchi, M., Matsuda, T., Saito, Y., Ikematsu, H., Hotta, K., Ohtsuka, K., Kudo, T., & Mori, K. (2020). Cost savings in colonoscopy with artificial intelligence-aided polyp diagnosis: an add-on analysis of a clinical trial (with video). Gastrointestinal Endoscopy, 92(4),905-911.e1. https://doi.org/10.1016/j.gie.2020.03.3759
  • Murdoch B. (2021). Privacy and artificial intelligence: challenges for protecting health information in a new era. BMC medicalethics, 22(1),122. https://doi.org/10.1186/s12910-021-00687-3 Nemesure, M. D., Heinz, M. V., Huang, R., & Jacobson, N. C. (2021). Predictive modelling of depression and anxiety using electronic health records and a novel machine learning approach with artificial intelligence. Scientific reports, 11(1), 1980. https://doi.org/10.1038/s41598-021-81368-4
  • Novelli, C., Taddeo, M., & Floridi , L. (2023). Accountability in Artificial Intelligence: What it is and how it works. AI & Society, 1-12. https://doi.org/10.1007/s00146-023- 01635-y
  • Park, J. H., Cho, H. E., Kim, J. H., Wall, M. M., Stern, Y., Lim, H., Yoo, S., Kim, H. S., & Cha, J. (2020). Machine learning prediction of incidence of Alzheimer's disease using large-scale administrative health data. NPJ digitalmedicine, 3, 46. https://doi.org/10.1038/s41746-020-0256-0
  • Qin, J., Chen, L., Liu, Y., Liu, C., Feng, C., & Chen, B. (2023). A Machine Learning Methodology for Diagnosing ChronicKidney Disease. IEEE Access,8, 20991-21002.
  • Rankin, D., Black, M., Bond, R., Wallace, J., Mulvenna, M., & Epelde, G. (2020). Reliability of Supervised Machine Learning Using Synthetic Data in Health Care: Model to Preserve Privacy for Data Sharing. JMIR medicalinformatics, 8(7), e18910. https://doi.org/10.2196/18910
  • Roma, P., Monaro, M., Muzi, L., Colasanti, M., Ricci, E., Biondi, S., Napoli, C., Ferracuti, S., &Mazza, C. (2020). How to Improve Compliance with Protective Health Measures During the COVID-19 Outbreak: Testing a Moderated Mediation Model and Machine Learning Algorithms. International Journal of environmental research and public health, 17(19),7252. https://doi.org/10.3390/ijerph17197252
  • Seyyed-Kalantari, L., Zhang, H., McDermott, M. B., Chen, I. Y., & Ghassemi, M. (2021). Underdiagnosis bias of artificial intelligence algorithms applied to chest radiographs in under-served patient populations. Nature Medicine, 27(12), 2176- 2182. https://doi.org/10.1038/s41591-021-01595-0
  • Song, Y., Zheng, S., Li, L., Zhang, X., Zhang, X., Huang, Z., Chen, J., Wang, R., Zhao, H., Chong, Y., Shen, J., Zha, Y., & Yang, Y. (2021). Deep Learning Enables Accurate Diagnosis of Novel Coronavirus (COVID-19) With CT Images. IEEE/ACM transactions on computational biology and bioinformatics, 18(6), 2775–2780. https://doi.org/10.1109/TCBB.2021.3065361
  • Souri, A., Ghafour,M.Y., Ahmed, A.M., Safara, F., Yamini, A., & Hoseyninezhad, M. (2020). A new machine learning-based healthcare monitoring model for student's condition diagnosis in Internet of Things environment. Soft Computing, 24, 17111 - 17121.
  • Srivastava, A., Jain, S., Miranda,R., Patil, S., Pandya, S., & Kotecha,K. (2021). Deep learning-based respiratory sound analysis for detection of chronic obstructive pulmonary disease.PeerJ. Computer science, 7, e369. https://doi.org/10.7717/peerj-cs.369
  • Tang, A., Tam, R., Cadrin-Chenevert, A., Guest, W., Chong, J., Barfett, J., . . . Cicero, M. D. (2018). Canadian Association of Radiologists white paper on artificial intelligence in radiology. Canadian Association of Radiologists Journal, 69(2), 120-135. https://doi.org/10.1016/j.carj.2018.02.002.
  • Tekin, E., & Emikönel, S. (2023). Comparison of Mobile Health Application Examples in Turkey and the World. In U. Akküçük, Handbook of Research on Quality and Competitiveness in the Healthcare Services Sector (pp.223-236). IGI Global. https://doi.org/10.4018/978-1-6684-8103-5.ch013
  • Tiwari, P., Colborn, K. L., Smith, D. E., Xing, F., Ghosh, D., & Rosenberg, M. A. (2020). Assessment of a Machine Learning Model Applied to Harmonized Electronic Health Record Data for the Prediction of Incident Atrial Fibrillation. JAMA networkopen, 3(1), e1919396. https://doi.org/10.1001/jamanetworkopen.2019.19396
  • Tuli, S., Basumatary, N., Gill, S. S., Kahani, M., Arya, R. C., Wander, G. S., & Buyya, R. (2020). HealthFog: An ensemble deep learning-based Smart Healthcare System for Automatic Diagnosis of Heart Diseases in Integrated IoT and Fog Computing Environments. Future Generation ComputerSystems, 104, 187-200. https://doi.org/10.1016/J.FUTURE.2019.10.043
  • Türkmen, İ., & Özkara, B. (2001). Evaluation of Hospital Information Management System with Information Systems Success Model. Journal of Information Technologies, 14(4), 403-410. https://doi.org/10.17671/gazibtd.830213
  • Vaid, A., Jaladanki,S. K., Xu, J., Teng, S., Kumar, A., Lee, S., Somani, S., Paranjpe,I., De Freitas, J. K., Wanyan, T., Johnson, K. W, Bicak, M., Klang, E., Kwon, Y. J., Costa, A., Zhao, S., Miotto, R., Charney, A. W., Böttinger, E., Fayad, Z. A., ... Glicksberg, B. S. (2021). FederatedLearning of Electronic Health Records to Improve MortalityPrediction in Hospitalized Patients with COVID-19: Machine Learning Approach. JMIR medical informatics, 9(1), e24207. https://doi.org/10.2196/24207
  • Vayena, E., Blasimme, A., & Cohen, I. G. (2018). Machine Learning in Medicine: Addressing Ethical Challenges. Plos Medicine,15(11), e1002689. https://doi.org/10.1371/journal.pmed.1002689
  • Vellido, A. Interpretability and visualization are important in machine learning for applications in medicine and health care. Neural Comput & Applic 32, 18069–18083 (2020). https://doi.org/10.1007/s00521-019-04051-w
  • Wang, D., Mo, J., Zhou, G., Xu, L., & Liu, Y. (2020). An efficient mixture of deep and machine learning models for COVID-19 diagnosis in chest X-ray images. PloS one, 15(11), e0242535. https://doi.org/10.1371/journal.pone.0242535
  • Wang, D., Mo, J., Zhou, G., Xu, L., & Liu, Y. (2020). An efficient mixture of deep and machine learning models for COVID-19 diagnosis in chest X-ray images. PloS one, 15(11), e0242535. https://doi.org/10.1371/journal.pone.0242535
  • Wang, W., & Siau, K. (2019). Artificial Intelligence, Machine Learning, Automation, Robotics, Future of Work and Future of Humanity. Journal of Database Management, 30(1), 61- 79. https://doi.org/10.4018/jdm.2019010104
  • Xie, C., Zhuang, X. X., Niu, Z., Ai, R., Lautrup, S., Zheng, S., Jiang, Y., Han, R., Gupta, T. S., Cao, S., Lagartos-Donate, M. J., Cai, C. Z., Xie, L. M., Caponio,D., Wang, W. W., Schmauck-Medina, T., Zhang,J., Wang, H. L., Lou, G., Xiao,X., ... Fang, E. F. (2022). Amelioration of Alzheimer's disease pathology by mitophagy inducers identified via machine learning and a cross-species workflow. Nature Biomedical Engineering,6(1), 76-93. https://doi.org/10.1038/s41551-021-00819-5
  • Ye, J., Woods, D., Jordan, N., & Starren, J. (2024). The Role of Artificial Intelligence for the Application of Integrating Electronic Health Records and Patient-Generated Data in Clinical Decision Support. AMIA Jointt Summits Translational Science Proceedings, pp. 459–467.
  • Zhao, Y., Da, J., & Yan, J. (2021). Detecting health misinformation in online health communities: Incorporating behavioural features into machine learning-based approaches. Inf. Process.Manag., p. 58, 102390.
  • Zoabi, Y., Deri-Rozov, S., & Shomron, N. (2021). Machine learning-based prediction of COVID-19 diagnosis based on symptoms.NPJ digital medicine, 4(1), 3. https://doi.org/10.1038/s41746-020-00372-6
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Details

Primary Language English
Subjects Health Care Administration
Journal Section Orginal Research
Authors

İbrahim Türkmen 0000-0002-1558-0736

Arif Söyler 0000-0001-7699-6316

Seymur Aliyev 0009-0002-0224-5805

Tarık Semiz 0000-0002-6647-3383

Publication Date October 31, 2024
Submission Date August 15, 2024
Acceptance Date October 26, 2024
Published in Issue Year 2024 Volume: 10 Issue: 20

Cite

APA Türkmen, İ., Söyler, A., Aliyev, S., Semiz, T. (2024). Bibliometric and Content Analysis of Articles on Artificial Intelligence in Healthcare. Journal of International Health Sciences and Management, 10(20), 137-148. https://doi.org/10.48121/jihsam.1533583
AMA Türkmen İ, Söyler A, Aliyev S, Semiz T. Bibliometric and Content Analysis of Articles on Artificial Intelligence in Healthcare. Journal of International Health Sciences and Management. October 2024;10(20):137-148. doi:10.48121/jihsam.1533583
Chicago Türkmen, İbrahim, Arif Söyler, Seymur Aliyev, and Tarık Semiz. “Bibliometric and Content Analysis of Articles on Artificial Intelligence in Healthcare”. Journal of International Health Sciences and Management 10, no. 20 (October 2024): 137-48. https://doi.org/10.48121/jihsam.1533583.
EndNote Türkmen İ, Söyler A, Aliyev S, Semiz T (October 1, 2024) Bibliometric and Content Analysis of Articles on Artificial Intelligence in Healthcare. Journal of International Health Sciences and Management 10 20 137–148.
IEEE İ. Türkmen, A. Söyler, S. Aliyev, and T. Semiz, “Bibliometric and Content Analysis of Articles on Artificial Intelligence in Healthcare”, Journal of International Health Sciences and Management, vol. 10, no. 20, pp. 137–148, 2024, doi: 10.48121/jihsam.1533583.
ISNAD Türkmen, İbrahim et al. “Bibliometric and Content Analysis of Articles on Artificial Intelligence in Healthcare”. Journal of International Health Sciences and Management 10/20 (October 2024), 137-148. https://doi.org/10.48121/jihsam.1533583.
JAMA Türkmen İ, Söyler A, Aliyev S, Semiz T. Bibliometric and Content Analysis of Articles on Artificial Intelligence in Healthcare. Journal of International Health Sciences and Management. 2024;10:137–148.
MLA Türkmen, İbrahim et al. “Bibliometric and Content Analysis of Articles on Artificial Intelligence in Healthcare”. Journal of International Health Sciences and Management, vol. 10, no. 20, 2024, pp. 137-48, doi:10.48121/jihsam.1533583.
Vancouver Türkmen İ, Söyler A, Aliyev S, Semiz T. Bibliometric and Content Analysis of Articles on Artificial Intelligence in Healthcare. Journal of International Health Sciences and Management. 2024;10(20):137-48.