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一种基于舌象特征和深度学习预测胃癌的框架。

A Framework to Predict Gastric Cancer Based on Tongue Features and Deep Learning.

作者信息

Zhu Xiaolong, Ma Yuhang, Guo Dong, Men Jiuzhang, Xue Chenyang, Cao Xiyuan, Zhang Zhidong

机构信息

Key Laboratory of Instrumentation Science & Dynamic Measurement, School of Instrument and Electronics, North University of China, Taiyuan 030051, China.

Shanxi University of Chinese Medicine, Taiyuan 030051, China.

出版信息

Micromachines (Basel). 2022 Dec 25;14(1):53. doi: 10.3390/mi14010053.

Abstract

Gastric cancer has become a global health issue, severely disrupting daily life. Early detection in gastric cancer patients and immediate treatment contribute significantly to the protection of human health. However, routine gastric cancer examinations carry the risk of complications and are time-consuming. We proposed a framework to predict gastric cancer non-invasively and conveniently. A total of 703 tongue images were acquired using a bespoke tongue image capture instrument, then a dataset containing subjects with and without gastric cancer was created. As the images acquired by this instrument contain non-tongue areas, the Deeplabv3+ network was applied for tongue segmentation to reduce the interference in feature extraction. Nine tongue features were extracted, relationships between tongue features and gastric cancer were explored by using statistical methods and deep learning, finally a prediction framework for gastric cancer was designed. The experimental results showed that the proposed framework had a strong detection ability, with an accuracy of 93.6%. The gastric cancer prediction framework created by combining statistical methods and deep learning proposes a scheme for exploring the relationships between gastric cancer and tongue features. This framework contributes to the effective early diagnosis of patients with gastric cancer.

摘要

胃癌已成为一个全球性的健康问题,严重影响日常生活。胃癌患者的早期检测和及时治疗对保护人类健康有重大贡献。然而,常规的胃癌检查存在并发症风险且耗时。我们提出了一个框架,用于无创且便捷地预测胃癌。使用定制的舌图像采集仪器共采集了703张舌图像,然后创建了一个包含胃癌患者和非胃癌患者的数据集。由于该仪器采集的图像包含非舌区域,因此应用Deeplabv3+网络进行舌部分割,以减少对特征提取的干扰。提取了九个舌特征,通过统计方法和深度学习探索舌特征与胃癌之间的关系,最终设计了一个胃癌预测框架。实验结果表明,所提出的框架具有很强的检测能力,准确率为93.6%。通过结合统计方法和深度学习创建的胃癌预测框架提出了一种探索胃癌与舌特征之间关系的方案。该框架有助于胃癌患者的有效早期诊断。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7ad0/9865689/0ffb756c9845/micromachines-14-00053-g001.jpg

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