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An automatic multi-view disease detection system via Collective Deep Region-based Feature Representation

机译:基于集体深度区域的特征表示自动多视图疾病检测系统

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摘要

With today's growing requirements in disease diagnosis, we are constantly looking for better solutions. To meet the current demands, a disease detection system being highly effective as well as efficient is required. Existing and popular medical biometrics methods mainly focus on the local features extracted from raw medical image data, rather than study them globally. Meanwhile, prior knowledge is predefined in these methods so that procedures are inconsistent and require more manual operations. To address these, we present an automatic multi-view disease detection system, which contains a series of automatic procedures. The system first takes a tuple of images containing the face, tongue, and sublingual vein as the multi-view input, before directly outputting the predicted class label. To perform multi-view disease diagnosis, we propose a collective deep region-based feature representation. In summary, there are three real innovations in this paper: (1) Automated end-to-end medical biometrics system, (2) Deep region-based feature representation, (3) Multi-view multi-disease medical biometrics diagnosis. Extensive experiments were conducted on four diseases and one healthy control group using binary classification, showing both the effectiveness and efficiency of the proposed system. The average accuracy achieved was 95.8%, 96.49%, 96%, and 96.8% for breast tumor, heart disease, fatty liver, and lung tumor versus healthy control group taking 0.0031s, 0.003s, 0.0046s, and 0.0033s to process each sample respectively.
机译:随着当今疾病诊断的日益增长的要求,我们不断寻找更好的解决方案。为了满足当前的需求,需要一种非常有效的疾病检测系统以及有效。现有和流行的医学生物识别方法主要关注原始医学图像数据中提取的本地特征,而不是全球研究。同时,先验知识在这些方法中预定义,以便程序不一致,需要更多的手动操作。为了解决这些问题,我们提出了一种自动的多视图疾病检测系统,其中包含一系列自动程序。在直接输出预测的类标签之前,系统首先占据包含面部,舌头和舌下静脉的图像元组,作为多视图输入。为了进行多视图疾病诊断,我们提出了一个基于深度区域的特征表示。总之,本文有三种真正的创新:(1)自动端到端医学生物识别系统,(2)基于深度区域的特征表示,(3)多视图多疾病医学生物学测诊断。使用二进制分类对四种疾病和一个健康对照组进行了广泛的实验,显示了所提出的系统的有效性和效率。患有乳腺肿瘤,心脏病,脂肪肝和肺肿瘤的平均精度为95.8%,96.49%,96%和96.8%,而健康对照组采用0.0031秒,0.003秒,0.0046s和0.0033s以处理样本分别。

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