Kidney stone classification using deep learning neural network

Nisha Vasudeva, Vivek Kumar Sharma, Shashi Sharma, Ravi Shankar Sharma, Satyajeet Sharma, Gajanand Sharma
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Abstract

Kidney stones are the common problem in the healthcare system. It is rapidly increasing day by day and becomes a global health crisis in worldwide. Various deep learning algorithms are used for classificationof stone in kidney area. The computer aided design approach can be used for assist doctor for finding out the stone in kidney area. For kidney transplantation and dialysis, a proper treatment is required. It is important to have reliable techniques for predicting kidney stone size atits early stages. Different machine learning (ML) algorithmsare given excellent results in predicting stone. In this paper, clinicaldata is used for predicting of stone in kidney. If data have some missing values, data unbalancing problem then machine learning algorithms assist to solve this problem in which includes data preprocessing, a technique for managing missing values, data aggregation, feature extraction and prediction of result by evaluating values. In this study, deep learning algorithm for classification of kidney stone sizes automatically on the patient’s dataset is used. A total of 1000 patient’s dataset are used for finding out kidney stone size i.e., large or small. The binary classification algorithm is used for classification of stone size. We observed that our model gives best result for classification of kidney stone image size.
利用深度学习神经网络进行肾结石分类
肾结石是医疗保健系统中的常见问题。它正日益迅速增加,成为世界范围内的全球性健康危机。各种深度学习算法被用于肾区结石的分类。计算机辅助设计方法可辅助医生发现肾区结石。对于肾移植和透析,需要适当的治疗。有可靠的技术来预测早期肾结石的大小是很重要的。不同的机器学习(ML)算法在预测结石方面都有很好的结果。本文将临床资料用于肾结石的预测。如果数据有一些缺失值,数据不平衡问题,那么机器学习算法可以帮助解决这个问题,其中包括数据预处理,缺失值管理技术,数据聚合,特征提取和通过评估值预测结果。在本研究中,使用深度学习算法在患者数据集上自动分类肾结石大小。总共有1000个患者的数据集用于发现肾结石的大小,即大或小。采用二元分类算法对石材粒度进行分类。我们观察到我们的模型对肾结石图像大小的分类给出了最好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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