高光谱成像
肝硬化
肝细胞癌
肝癌
卷积神经网络
深度学习
医学
人工智能
癌症
放射科
计算机科学
病理
癌症研究
内科学
作者
T Hang,Dan-Feng Fan,Tiefeng Sun,Zhengyuan Chen,Xiaoqing Yang,Xinliang Yue
标识
DOI:10.1002/jbio.202400557
摘要
ABSTRACT Liver malignancies, particularly hepatocellular carcinoma (HCC), pose a formidable global health challenge. Conventional diagnostic techniques frequently fall short in precision, especially at advanced HCC stages. In response, we have developed a novel diagnostic strategy that integrates hyperspectral imaging with deep learning. This innovative approach captures detailed spectral data from tissue samples, pinpointing subtle cellular differences that elude traditional methods. A sophisticated deep convolutional neural network processes this data, effectively distinguishing high‐grade liver cancer from cirrhosis with an accuracy of 89.45%, a sensitivity of 90.29%, and a specificity of 88.64%. For HCC differentiation specifically, it achieves an impressive accuracy of 93.73%, sensitivity of 92.53%, and specificity of 90.07%. Our results underscore the potential of this technique as a precise, rapid, and non‐invasive diagnostic tool that surpasses existing clinical methods in staging liver cancer and differentiating cirrhosis.
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