On-Device Prediction for Chronic Kidney Disease

Alex Whelan, Soham Phadke, A. Bellofiore, D. Anastasiu
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引用次数: 1

Abstract

The number of people diagnosed with advanced stages of kidney disease has been rising every year. Although early diagnosis and treatment can slow, if not stop, the progression of the disease, many lower income individuals are unable to afford the high cost of frequent testing necessary to keep the disease progression at bay. To address this issue, we designed a kidney health monitoring system that allows for affordable and quick testing through the use of inexpensive test strips and a mobile application. Moreover, the application serves as a research framework for testing and improving detection models for the disease. In this paper, we describe the application we developed and several preliminary machine learning models we trained to classify the severity of the kidney disease as normal, intermediate risk, or kidney failure. We thoroughly evaluated the effectiveness of our models and found that our histogram of colors-based boosted tree method outperformed alternatives and exhibited good overall prediction performance (F1-score > 90%).
慢性肾脏疾病的设备上预测
被诊断为肾脏病晚期的人数每年都在上升。尽管早期诊断和治疗即使不能阻止疾病的进展,也可以减缓疾病的进展,但许多低收入个人无法负担为防止疾病进展而进行频繁检测的高昂费用。为了解决这个问题,我们设计了一个肾脏健康监测系统,通过使用廉价的试纸和移动应用程序,可以进行负担得起的快速测试。此外,该应用程序还可以作为测试和改进疾病检测模型的研究框架。在本文中,我们描述了我们开发的应用程序和我们训练的几个初步机器学习模型,以将肾脏疾病的严重程度分类为正常,中等风险或肾衰竭。我们彻底评估了我们模型的有效性,发现我们基于颜色直方图的增强树方法优于其他方法,并表现出良好的整体预测性能(F1-score > 90%)。
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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