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Privacy and Security of Bio-inspired Computing of Diabetic Retinopathy Detection Using Machine Learning

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Cryptology and Network Security with Machine Learning (ICCNSML 2023)

Abstract

The diagnosis and detection of numerous diseases has advanced significantly in the healthcare sector, which is always changing. One illness that has significantly impacted humankind is diabetes, a condition that directly impacts blood glucose levels. Glucose, or sugar, is the primary source of energy for our bodies, and it is derived from the food we consume. Insulin, produced by the pancreas, assists glucose in entering the cells of the body. But diabetics are either unable to use their own insulin well or do not create enough of it, resulting in increased levels of carbohydrates in the body. New diseases are being diagnosed at an alarming rate, which is indicative of the impact that changes in our lifestyle habits have had on our health. This paper is about fulfilling two major objectives, i.e. (i) The dataset has been made secured by applying encryption generation key to it. This will help in maintaining the privacy of the patients and also will avoid unauthorized access. (ii) Secondly, in order to predict diabetic retinopathy in the patient’s various machine learning models have been used. This work truly shows the importance of data security and data preservation using cryptography (Fernet). It can help clinicians in making better decisions during critical stages of treatment. Our findings show how well machine learning and data security operate to diagnose diabetic retinopathy, and they also point to areas that could be improved in the future with the use of deep learning models and frameworks.

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References

  1. Farajollahi B, Mehmannavaz M, Mehrjoo H, Moghbeli F, Sayadi MJ (2021) Diabetes diagnosis using machine learning. Front Health Inform 10(1):65

    Article  Google Scholar 

  2. Bastaki S (2005) Diabetes mellitus and its treatment. Dubai Diabetes Endocrinol J 13:111–134

    Google Scholar 

  3. Benbelkacem S, Atmani B (2019) Random forests for diabetes diagnosis. In: 2019 international conference on computer and information sciences (ICCIS). IEEE

    Google Scholar 

  4. Mujumdar A, Vaidehi V (2019) Diabetes prediction using machine learning algorithms. Procedia Comput Sci 165:292–299

    Article  Google Scholar 

  5. Simplilearn (2022) Random forest algorithm. Simplilearn.com, 7 Sept 2022. www.simplilearn.com/tutorials/machine-learning-tutorial/random-forest-algorithm

  6. Gangwar AK, Ravi V (2021) Diabetic retinopathy detection using transfer learning and deep learning. In: Evolution in computational intelligence. Springer, Singapore, pp 679–689

    Google Scholar 

  7. Zhu T, Li K, Chen J, Herrero P, Georgiou P (2020) Dilated recurrent neural networks for glucose forecasting in type 1 diabetes. J Healthcare Inform Res 4(3):308–324

    Article  Google Scholar 

  8. Sulistyawati DH, Murtadho A (2020) Performance accuration method of machine learning for diabetes prediction: performance accuration method of machine learning for diabetes prediction. Jurnal Mantik 4(1):164–171

    Google Scholar 

  9. pawangfg (2021) XGBoost—GeeksforGeeks. GeeksforGeeks, 18 Sept 2021. www.geeksforgeeks.org/xgboost

  10. Vehí J, Contreras I, Oviedo S, Biagi L, Bertachi A (2020) Prediction and prevention of hypoglycaemic events in type-1 diabetic patients using machine learning. Health Inform J 26(1):703–718

    Article  Google Scholar 

  11. Lynam AL, Dennis JM, Owen KR, Oram RA, Jones AG, Shields BM, Ferrat LA (2020) Logistic regression has similar performance to optimised machine learning algorithms in a clinical setting: application to the discrimination between type 1 and type 2 diabetes in young adults. Diagn Prognostic Res 4(1):1–10

    Article  Google Scholar 

  12. Rodríguez-Rodríguez I, Rodríguez JV, Woo WL, Wei B, Pardo-Quiles DJ (2021) A comparison of feature selection and forecasting machine learning algorithms for predicting glycaemia in type 1 diabetes mellitus. Appl Sci 11(4):1742

    Article  Google Scholar 

  13. Rodríguez-Rodríguez I, Chatzigiannakis I, Rodríguez JV, Maranghi M, Gentili M, Zamora-Izquierdo MÁ (2019) Utility of big data in predicting short-term blood glucose levels in type 1 diabetes mellitus through machine learning techniques. Sensors 19(20):4482

    Article  Google Scholar 

  14. Fernández-Edreira D, Liñares-Blanco J, Fernandez-Lozano C (2021) Machine Learning analysis of the human infant gut microbiome identifies influential species in type 1 diabetes. Expert Syst Appl 185:115648

    Article  Google Scholar 

  15. Haq AU, Li JP, Khan J, Memon MH, Nazir S, Ahmad S, Khan GA, Ali A (2020) Intelligent machine learning approach for effective recognition of diabetes in E-healthcare using clinical data. Sensors 20(9):2649

    Google Scholar 

  16. Rubaiat SY, Rahman MM, Hasan MK (2018) Important feature selection & accuracy comparisons of different machine learning models for early diabetes detection. In: 2018 international conference on innovation in engineering and technology (ICIET). IEEE, pp 1–6

    Google Scholar 

  17. Alabdulwahhab KM, Sami W, Mehmood T, Meo SA, Alasbali TA, Alwadani FA (2021) Automated detection of diabetic retinopathy using machine learning classifiers. Eur Rev Med Pharmacol Sci 25(2):583–590

    Google Scholar 

  18. Xie Z, Nikolayeva O, Luo J, Li D (2019) Peer reviewed: building risk prediction models for type 2 diabetes using machine learning techniques. Preventing Chronic Disease 16

    Google Scholar 

  19. Himthani P, Dubey GP, Sharma BM, Taneja A (2020) Big data privacy and challenges for machine learning. In: 2020 fourth international conference on I-SMAC (IoT in social, mobile, analytics and cloud) (I-SMAC). IEEE, pp 707–713

    Google Scholar 

  20. Brauneck A, Schmalhorst L, Kazemi Majdabadi MM, Bakhtiari M, Völker U, Baumbach J, Baumbach L, Buchholtz G (2023) Federated machine learning, privacy-enhancing technologies, and data protection laws in medical research: scoping review. J Med Internet Res 25:e41588

    Google Scholar 

  21. Rivest RL (1991) Cryptography and machine learning. In: International conference on the theory and application of cryptology. Springer, Berlin, Heidelberg, pp 427–439

    Google Scholar 

  22. Ahmed U, Lin JCW, Srivastava G (2022) Mitigating adversarial evasion attacks of ransomware using ensemble learning. Comput Electr Eng 100:107903

    Article  Google Scholar 

  23. Alani MM (2019) Applications of machine learning in cryptography: a survey. In: Proceedings of the 3rd international conference on cryptography, security and privacy, pp 23–27

    Google Scholar 

  24. Saru S, Subashree S (2019) Analysis and prediction of diabetes using machine learning. Int J Emerg Technol Innov Eng 5(4)

    Google Scholar 

  25. GeeksforGeeks (2017) Decision tree—GeeksforGeeks. GeeksforGeeks, 16 Oct 2017. www.geeksforgeeks.org/decision-tree

  26. Tigga NP, Garg S (2020) Prediction of type 2 diabetes using machine learning classification methods. Procedia Comput Sci 167:706–716

    Article  Google Scholar 

  27. Ghosh P, Azam S, Karim A, Hassan M, Roy K, Jonkman M (2021) A comparative study of different machine learning tools in detecting diabetes. Procedia Comput Sci 192:467–477

    Article  Google Scholar 

  28. Sasidharan A (2022) Support vector machine algorithm. GeeksforGeeks, 24 Nov 2022. https://www.geeksforgeeks.org/support-vector-machine-algorithm/

  29. Hasan MK, Alam MA, Das D, Hossain E, Hasan M (2020) Diabetes prediction using ensembling of different machine learning classifiers. IEEE Access 8:76516–76531

    Article  Google Scholar 

  30. Kaur H, Kumari V (2020) Predictive modelling and analytics for diabetes using a machine learning approach. Appl Comput Inform

    Google Scholar 

  31. Sharma N, Singh A (2018) Diabetes detection and prediction using machine learning/IoT: a survey. In: International conference on advanced informatics for computing research. Springer, Singapore, pp 471–479

    Google Scholar 

  32. Saini A (2022) AdaBoost algorithm—a complete guide for beginners. Analytics Vidhya, 1 Dec 2022. https://www.analyticsvidhya.com/blog/2021/09/adaboost-algorithm-a-complete-guide-forbeginners/#:~:text=The%20most%20common%20algorithm%20used,are%20also%20called%20Decision%20Stumps

  33. Aggarwal P (2019) ML|XGBoost (eXtreme gradient boosting)—GeeksforGeeks. GeeksforGeeks, 19 Aug 2019. www.geeksforgeeks.org/ml-xgboost-extreme-gradient-boosting

  34. Cahn A, Shoshan A, Sagiv T, Yesharim R, Goshen R, Shalev V, Raz I (2020) Prediction of progression from pre-diabetes to diabetes: development and validation of a machine learning model. Diabetes Metab Res Rev 36(2):e3252

    Article  Google Scholar 

  35. Perveen S, Shahbaz M, Keshavjee K, Guergachi A (2019) Prognostic modeling and prevention of diabetes using machine learning technique. Sci Rep 9(1):1–9

    Article  Google Scholar 

  36. Kopitar L, Kocbek P, Cilar L, Sheikh A, Stiglic G (2020) Early detection of type 2 diabetes mellitus using machine learning-based prediction models. Sci Rep 10(1):1–12

    Article  Google Scholar 

  37. Allen A, Iqbal Z, Green-Saxena A, Hurtado M, Hoffman J, Mao Q, Das R (2022) Prediction of diabetic kidney disease with machine learning algorithms, upon the initial diagnosis of type 2 diabetes mellitus. BMJ Open Diabetes Res Care 10(1):e002560

    Article  Google Scholar 

  38. Ramesh J, Aburukba R, Sagahyroon A (2021) A remote healthcare monitoring framework for diabetes prediction using machine learning. Healthcare Technol Lett 8(3)

    Google Scholar 

  39. Al Masud F, Hosen MS, Ahmed A, Ibn Bashar M, Muyeed A, Jahan S, Paul BK, Ahmed K (2021) Development of score based smart risk prediction tool for detection of type-1 diabetes: a bioinformatics and machine learning approach. Biointerface Res ApplChem 11:9007–9016

    Google Scholar 

  40. Ramesh S, Balaji H, Iyengar NCS, Caytiles RD (2017) Optimal predictive analytics of pima diabetics using deep learning. Int J Database Theor Appl 10(9):47–62

    Article  Google Scholar 

  41. Chaki J, Ganesh ST, Cidham SK, Theertan SA (2020) Machine learning and artificial intelligence based diabetes mellitus detection and self-management: a systematic review. J King Saud Univ-Comput Inf Sci

    Google Scholar 

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Correspondence to Manoj Kumar .

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Kumar, M., Kumar, A.K., Bhargava, M., Singh, R.P., Shukla, A., Shukla, V. (2024). Privacy and Security of Bio-inspired Computing of Diabetic Retinopathy Detection Using Machine Learning. In: Chaturvedi, A., Hasan, S.U., Roy, B.K., Tsaban, B. (eds) Cryptology and Network Security with Machine Learning. ICCNSML 2023. Lecture Notes in Networks and Systems, vol 918. Springer, Singapore. https://doi.org/10.1007/978-981-97-0641-9_58

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  • DOI: https://doi.org/10.1007/978-981-97-0641-9_58

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