EN
Evaluation of Performance Metrics in Heart Disease by Machine Learning Techniques
Abstract
Aim: In addition to affecting the individual sociologically and psychologically, heart disease also poses important problems in health systems. Evaluation of heart disease performances has gained great importance in terms of machine learning method. In the study, performances were compared with the machine learning method for risk methods that classify heart illness.
Materials and Methods: The categorization process Throughout the research made use of the "Heart Disease Dataset," an open access dataset. F1-score, sensitivity, selectivity, accuracy, balanced accuracy, negative and positive predictive values were used to assess the performance of the categorisation model using the machine learning approach. Random forest method, one of the variable selection methods, was used.
Results: According to the relational classification model's classification findings for heart disease, the accuracy, balanced accuracy, sensitivity, selectivity, positive predictive value, negative predictive value, and F1-score values were observed to be 0.997, 0.997, 0.995, 1, 1, and 0.995, respectively.
Conclusion: The relational classification model proposed in the analysis obtained in the web-based open access dataset yielded distinctively successful results in classifying heart disease according to performance criteria.
Keywords
Supporting Institution
İNÖNÜ ÜNİVERSİTESİ BİYOİSTATİSTİK VE TIP BİLİŞİMİ ANABİLİM DALI
References
- [1] Hurwitz, J., et al., Augmented intelligence: the business power of human–machine collaboration. 2019: CRC Press.
- [2] Widmer, R.J., et al. Digital health interventions for the prevention of cardiovascular disease: a systematic review and meta-analysis. in Mayo Clinic Proceedings. 2015. Elsevier.
- [3] Fan, C.-Y., et al., A hybrid model combining case-based reasoning and fuzzy decision tree for medical data classification. Applied Soft Computing, 2011. 11(1): p. 632-644.
- [4] Saygin, E. and M. Baykara, Karaciğer Yetmezliği Teşhisinde Özellik Seçimi Kullanarak Makine Öğrenmesi Yöntemlerinin Başarılarının Ölçülmesi. Fırat Üniversitesi Mühendislik Bilimleri Dergisi, 2021. 33(2): p. 367-377.
- [5] Özekes, S., Veri madenciliği modelleri ve uygulama alanları. 2003.
- [6] Pujari, A.K., Data mining techniques. 2001: Universities press.
- [7] Chakraborty, K., et al., Sentiment Analysis of COVID-19 tweets by Deep Learning Classifiers—A study to show how popularity is affecting accuracy in social media. Applied Soft Computing, 2020. 97: p. 106754.
- [8] Akbulut, S., Veri madenciliği teknikleri ile bir kozmetik markanın ayrılan müşteri analizi ve müşteri segmentasyonu. Gazi Üniversitesi Fen Bilimleri Enstitüsü, Ankara, 2006.
Details
Primary Language
English
Subjects
Electrical Engineering
Journal Section
Research Article
Early Pub Date
July 2, 2023
Publication Date
July 1, 2023
Submission Date
April 4, 2023
Acceptance Date
June 3, 2023
Published in Issue
Year 2023 Volume: 8 Number: 1
APA
Pınar, A., Çolak, C., & Gültürk, E. (2023). Evaluation of Performance Metrics in Heart Disease by Machine Learning Techniques. The Journal of Cognitive Systems, 8(1), 11-15. https://doi.org/10.52876/jcs.1276688
AMA
1.Pınar A, Çolak C, Gültürk E. Evaluation of Performance Metrics in Heart Disease by Machine Learning Techniques. JCS. 2023;8(1):11-15. doi:10.52876/jcs.1276688
Chicago
Pınar, Abdulvahap, Cemil Çolak, and Esra Gültürk. 2023. “Evaluation of Performance Metrics in Heart Disease by Machine Learning Techniques”. The Journal of Cognitive Systems 8 (1): 11-15. https://doi.org/10.52876/jcs.1276688.
EndNote
Pınar A, Çolak C, Gültürk E (July 1, 2023) Evaluation of Performance Metrics in Heart Disease by Machine Learning Techniques. The Journal of Cognitive Systems 8 1 11–15.
IEEE
[1]A. Pınar, C. Çolak, and E. Gültürk, “Evaluation of Performance Metrics in Heart Disease by Machine Learning Techniques”, JCS, vol. 8, no. 1, pp. 11–15, July 2023, doi: 10.52876/jcs.1276688.
ISNAD
Pınar, Abdulvahap - Çolak, Cemil - Gültürk, Esra. “Evaluation of Performance Metrics in Heart Disease by Machine Learning Techniques”. The Journal of Cognitive Systems 8/1 (July 1, 2023): 11-15. https://doi.org/10.52876/jcs.1276688.
JAMA
1.Pınar A, Çolak C, Gültürk E. Evaluation of Performance Metrics in Heart Disease by Machine Learning Techniques. JCS. 2023;8:11–15.
MLA
Pınar, Abdulvahap, et al. “Evaluation of Performance Metrics in Heart Disease by Machine Learning Techniques”. The Journal of Cognitive Systems, vol. 8, no. 1, July 2023, pp. 11-15, doi:10.52876/jcs.1276688.
Vancouver
1.Abdulvahap Pınar, Cemil Çolak, Esra Gültürk. Evaluation of Performance Metrics in Heart Disease by Machine Learning Techniques. JCS. 2023 Jul. 1;8(1):11-5. doi:10.52876/jcs.1276688
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