Enhancing Security of Medical Image Data in the Cloud Using Machine Learning Technique

Chandra Shekhar Tiwari, Vijay Kumar Jha
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引用次数: 3

Abstract

To prevent medical data leakage to third parties, algorithm developers have enhanced and modified existing models and tightened the cloud security through complex processes. This research utilizes PlayFair and K-Means clustering algorithm as double-level encryption/ decryption technique with ArnoldCat maps towards securing the medical images in cloud. K-Means is used for segmenting images into pixels and auto-encoders to remove noise (de-noising);the Random Forest regressor, tree-method based ensemble model is used for classification. The study obtained CT scan-images as datasets from ‘Kaggle’ and classifies the images into ‘Non-Covid’ and ‘Covid’ categories. The software utilized is Jupyter-Notebook, in Python. PSNR with MSE evaluation metrics is done using Python. Through testing-and-training datasets, lower MSE score (‘0’) and higher PSNR score (60%) were obtained, stating that, the developed decryption/ encryption model is a good fit that enhances cloud security to preserve digital medical images. © 2022 MECS.
利用机器学习技术增强云中医学图像数据的安全性
为了防止医疗数据泄露给第三方,算法开发人员对现有模型进行了增强和修改,并通过复杂的流程加强了云安全。本研究利用PlayFair和K-Means聚类算法作为双层加密/解密技术,结合ArnoldCat地图来保护云中的医学图像。K-Means用于将图像分割为像素和自动编码器以去除噪声(去噪);Random Forest回归器,基于树法的集成模型用于分类。该研究从“Kaggle”中获得CT扫描图像作为数据集,并将图像分为“Non-Covid”和“Covid”两类。使用的软件是Jupyter-Notebook, Python语言。带有MSE评估指标的PSNR是使用Python完成的。通过测试和训练数据集,获得了较低的MSE得分(' 0 ')和较高的PSNR得分(60%),说明所开发的解密/加密模型非常适合增强云安全性以保存数字医学图像。©2022 mes。
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