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Yıl 2024, Cilt: 4 Sayı: 2, 155 - 192, 01.10.2024

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Kaynakça

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Prediction of Lung Cancer with Fuzzy Logic Methods: A Systematic Review

Yıl 2024, Cilt: 4 Sayı: 2, 155 - 192, 01.10.2024

Öz

According to the World Health Organization (WHO), lung cancer is the primary cause of cancer-related deaths worldwide and is known to have the highest mortality rate among both men and women. Early and accurate detection of lung cancer can lead to better treatments and outcomes. Different methods can be used to diagnose a complex and uncertain disease, such as lung cancer, and fuzzy logic is one of these methods. The challenge of diagnosing lung cancer nodules, coupled with the high mortality rate of lung cancer, underscores the significance of using fuzzy logic. Fuzzy logic offers a problem-solving approach that relies on logical rules and if-then statements, incorporating human experience. There are many studies in the literature on the diagnosis of lung cancer with fuzzy logic approaches, and it is important to examine these studies to provide a general framework on this subject. Therefore, this systematic review aims to synthesize and evaluate the current evidence on the application of fuzzy logic methods in lung cancer prediction and diagnosis, and thus can provide a guide to researchers and decision makers who want to work in this field. The study followed the PRISMA guidelines for systematic reviews, ensuring a structured and transparent approach to the research process. Scopus, Web of Science (WoS), PubMed, and IEEE Explore databases were searched to find relevant studies, and appropriate studies were carefully reviewed. The inclusion and exclusion criteria were clearly defined, and the analysis process was performed independently. Out of 222 initially identified studies, 51 met the inclusion criteria and were analyzed in depth. The most commonly used fuzzy logic techniques were Fuzzy Rule-Based Systems, Fuzzy C-Means Clustering, and Fuzzy Inference Systems. Studies reported accuracy rates ranging from 85% to 98% in lung cancer prediction and diagnosis. Hybrid models combining fuzzy logic with other machine learning techniques showed particularly promising results. Fuzzy logic methods demonstrate significant potential in improving the accuracy of lung cancer prediction and diagnosis. However, further research is needed to standardize approaches and validate these methods in large-scale clinical settings. The integration of fuzzy logic with other artificial intelligence techniques presents a promising direction for future developments in lung cancer diagnostics.

Kaynakça

  • [1] World Health Organization (2022). Cancer. https://www.who.int/news-room/fact-sheets/detail/cancer.
  • [2] Aberle, D. R., Adams, A. M., Berg, C. D., Black, W. C., Clapp, J. D., Fagerstrom, R. M., ... & National Lung Screening Trial Research Team. (2011). Reduced lung-cancer mortality with low-dose computed tomographic screening. New England Journal of Medicine, 365(5), 395-409.
  • [3] Chen, W., Wang, Y., Tian, D., & Yao, Y. (2023). CT lung nodule segmentation: A comparative study of-data preprocessing and deep learning models. IEEE Access, 11, 34925-34931.
  • [4] Cancer today. (2022). International Agency for Research on Cancer. Retrieved September 26, 2024, from https://gco.iarc.who.int/today/en/dataviz/bars?mode=cancer&key=total&group_populations= 1&types=0&sort_by=value1&populations=900&multiple_populations=0&values_position=out&cancers_h=39
  • [5] Cheng, J., Chen, W., Cao, Y., Xu, Z., Tan, Z., Zhang, X., … & Feng, J. (2020). Development and evaluation of an artificial intelligence system for COVID-19 diagnosis. Nature Communications, 11(1), https://doi.org/10.1038/s41467-020-18685-1
  • [6] Zadeh, L. A. (2008). Is there a need for fuzzy logic? Information Sciences, 178(13), 2751-2779.
  • [7] Duricova, L., & Hromada, M. (2016). Fuzzy logic as support for security and safety solution in soft targets. MATEC Web of Conferences, 76, 02034. https://doi.org/10.1051/matecconf/20167602034
  • [8] Ren, Q., Baron, L., & Balazinski, M. (2011). Type-2 fuzzy modeling for acoustic emission signal in precision manufacturing. Modelling and Simulation in Engineering, 2011, 1-12. https://doi.org/10.1155/2011/696947
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  • [15] Rivera, M. M., Olvera-González, E., & Escalante, N. (2023). Upafuzzysystems: A python library for control and simulation with fuzzy inference systems. Machines, 11(5), 572.
  • [16] Ahmadi, H., Gholamzadeh, M., Shahmoradi, L., Nilashi, M., & Rashvand, P. (2018). Diseases diagnosis using fuzzy logic methods: A systematic and meta-analysis review. Computer Methods and Programs in Biomedicine, 161, 145-172.
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  • [18] Pandey, S. K., & Bhandari, A. K. (2023). A systematic review of modern approaches in healthcare systems for lung cancer detection and classification. Archives of Computational Methods in Engineering, 30, 4359-4378. https://doi.org/10.1007/s11831-023-09940-x
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  • [22] Thomas, L. L., Goni, I. and Emeje G. D. (2019). Fuzzy Models Applied to Medical Diagnosis: A Systematic Review. Advances in Networks, 7(2), 45-50. https://doi.org/10.11648/j.net.20190702.15
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  • [25] Croitoru, D., Huang, Y., Kurdina, A., Chan, A., & Drucker, A. M. (2019). Quality of reporting in systematic reviews published in dermatology journals. British Journal of Dermatology, 182(6), 1469-1476. https://doi.org/10.1111/bjd.18528
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  • [27] Kumar, S. J. N., Alam, M. G., Raj, T. M., & Mageswari, R. U. (2024). Golden Search Optimization based adaptive and diagonal kernel convolution neural network for disease prediction and securing IoT data in cloud. Applied Soft Computing, 151, 111137.
  • [28] Lin, CJ, Lin, XQ ve Jhang, JY (2024). Akciğer Kanseri Görüntüleri için Karşıt Öğrenme Tabanlı Taguchi Evrişimli Bulanık Sinir Sınıflandırıcı. IEEE Erişimi .
  • [29] Arun Shalin, L. V., Kalaivani, K., Vishal Ratansing, P., & Sathish Kumar, J. (2022). Prognostic Analysis and Early Prediction of Lung Cancer through Gene Analysis. Cybernetics and Systems, 1-17.
  • [30] Jassim, M. M., & Jaber, M. M. (2022). Hybrid Selection Framework for Class Balancing Approaches Based on Integrated CNC and Decision Making Techniques for Lung Cancer Diagnosis. Eastern-European Journal of Enterprise Technologies, 118(9).
  • [31] Sinthia, P., Malathi, M., K, A., & Suresh Anand, M. (2022). Improving lung cancer detection using faster region‐based convolutional neural network aided with fuzzy butterfly optimization algorithm. Concurrency and Computation: Practice and Experience, 34(27), e7251.
  • [32] Wu, X., Denise, B. B., Zhan, F. B., & Zhang, J. (2022). Determining association between lung cancer mortality worldwide and risk factors using fuzzy inference modeling and random forest modeling. International Journal of Environmental Research and Public Health, 19(21), 14161.
  • [33] Geetha, N. (2022). Deep Separable Convolution Network for Prediction of Lung Diseases from X-rays. International Journal of Advanced Computer Science and Applications, 13(6).
  • [34] Dev, P. P., Patil, S. D., Hulipalled, V. R., & Patil, K. (2022). Fuzzy Sematic Segmentation and Efficient Classification of Lung Cancer Multi-Dimensional Datasets. International Journal of Fuzzy System Applications (IJFSA), 11(3), 1-12.
  • [35] Hussain, L., Aziz, W., Alshdadi, A. A., Nadeem, M. S. A., & Khan, I. R. (2019). Analyzing the dynamics of lung cancer imaging data using refined fuzzy entropy methods by extracting different features. IEEE Access, 7, 64704-64721.
  • [36] Arunkumar, C., & Ramakrishnan, S. (2019). Prediction of cancer using customised fuzzy rough machine learning approaches. Healthcare technology letters, 6(1), 13-18.
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  • [48] Nan, Y., Del Ser, J., Tang, Z., Tang, P., Xing, X., Fang, Y., ... & Yang, G. (2023). Fuzzy attention neural network to tackle discontinuity in airway segmentation. IEEE Transactions on Neural Networks and Learning Systems.
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Toplam 72 adet kaynakça vardır.

Ayrıntılar

Birincil Dil İngilizce
Konular Bulanık Hesaplama
Bölüm Reviews
Yazarlar

Beyza Aslan 0000-0002-3800-7991

Ouranıa Areta Hızıroğlu 0000-0001-8607-6089

Yayımlanma Tarihi 1 Ekim 2024
Gönderilme Tarihi 13 Eylül 2024
Kabul Tarihi 29 Eylül 2024
Yayımlandığı Sayı Yıl 2024 Cilt: 4 Sayı: 2

Kaynak Göster

APA Aslan, B., & Areta Hızıroğlu, O. (2024). Prediction of Lung Cancer with Fuzzy Logic Methods: A Systematic Review. Artificial Intelligence Theory and Applications, 4(2), 155-192.