应用CNN模型对SNP蛋白序列进行肠癌早期检测

Saifeddine Ben Nasr, Imen Messaoudi, A. Oueslati, Z. Lachiri
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引用次数: 3

摘要

发病率急剧上升的疾病之一是肠癌。由于这种疾病是一种可能没有症状的内部癌症,因此检测和诊断非常困难。肠癌的早期发现节省了工作量,最大限度地减少了诊断时间,并有助于确定最佳治疗方案以提高治愈率。许多深度学习系统正在开发中,以帮助医生早期诊断肠癌。这些系统使用几种类型的数据,如组织病理学图像。在本文中,我们提出了一种新的方法来分类肠癌读数和非病理性病变。这种方法是基于使用一个深度学习网络CNN(卷积神经网络)。我们使用位于人类5号染色体q22.2的APC基因的SNP蛋白序列作为训练数据。将SNP序列从文本形式转换为尺度图图像,然后在不同的颜色空间中呈现以创建三个数据库。为了评价该技术,我们采用了定量指标,如:准确性、敏感性、特异性和精密度。分别为96.19%、97.42%、85.46%和98.32%。这些结果表明了所提方法的有效性,也证实了APC基因SNP水平小蛋白变化与肠癌之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CNN model applied on SNP protein sequences for intestinal cancer early detection
One of the sharply increasing incidence rate diseases, is the intestinal cancer. Detecting and identifying this disease is very difficult since it is a type of internal cancer that may not cause symptoms. Early detection of bowel cancer saves effort, minimizes diagnostic time, and helps target the best treatment to increase the cure rate. Many deep learning systems are being produced to help physicians diagnose bowel cancer early. These systems use several types of data such as histopathological images. In this article, we propose a new method of classifying intestinal cancer readings and non-pathological lesions. This method is based on the use of a deep learning network CNN (convolutional neural network). As training data, we use the SNP protein sequences of APC gene which is located at q22.2 on the human chromosome 5. SNP sequences are transformed from textual form to scalogram images then presented on different color spaces to create three databases. In order to evaluate this technique, we use quantitative measures such as: accuracy, sensitivity, specificity and precision. The obtained values are respectively 96.19%, 97.42%, 85.46% and 98.32%. These results show the performance of the proposed method and confirm the relationship between small protein changes at the SNP level of APC gene and intestinal cancer.
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