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A Noninvasive Method to Detect Diabetes Mellitus and Lung Cancer Using the Stacked Sparse autoencoder

机译:使用堆叠式稀疏自动编码器的无创检测糖尿病和肺癌的方法

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Diabetes mellitus and lung cancer are two of the most common fatal diseases in the world, causing considerable deaths every year. However, it is not easy to detect diabetes mellitus and lung cancer efficiently--needing professional medical instruments such as a CT and a qualified individual to perform the Fasting Plasma Glucose test. Considering the risks and various inconveniences with conventional diagnosis methods, noninvasive approaches based on computerized analysis are desired. The aim of this paper is to distinguish patients with diabetes mellitus, lung cancer from healthy people simultaneously by analyzing facial images through the stacked sparse autoencoder. Experimental results on a dataset containing 450 healthy samples, 284 diabetes and 175 lung cancer patients produced the F1-score of 93.57%, 97.54%, 81.56% for detecting healthy, diabetes and lung cancer, respectively, validating the effectiveness of our proposed method.
机译:糖尿病和肺癌是世界上最常见的两种致命疾病,每年造成相当多的死亡。但是,要有效地检测糖尿病和肺癌并不容易,需要诸如CT和专业人士的专业医疗仪器来进行空腹血浆葡萄糖测试。考虑到常规诊断方法的风险和各种不便,期望基于计算机分析的非侵入性方法。本文的目的是通过堆叠的稀疏自动编码器分析面部图像,从而同时将糖尿病患者,肺癌患者与健康人区分开。在包含450例健康样本,284例糖尿病和175例肺癌患者的数据集上的实验结果,检测健康,糖尿病和肺癌的F1分数分别为93.57%,97.54%,81.56%,从而验证了我们提出的方法的有效性。

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