TRAITER:利用细胞核形态学和 DNA 损伤标记物进行心力衰竭的变构指导诊断和预后。

Hiromu Hayashi, Toshiyuki Ko, Zhehao Dai, Kanna Fujita, Seitaro Nomura, Hiroki Kiyoshima, Shinya Ishihara, Momoko Hamano, Issei Komuro, Yoshihiro Yamanishi
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引用次数: 0

摘要

动机:心力衰竭(HF)是发病和死亡的主要原因,需要精确的诊断和预后方法:心力衰竭(HF)是发病和死亡的主要原因,需要精确的诊断和预后方法:本研究提出了一种新颖的深度学习方法--基于变换器的组织图像有效补救分析(TRAITER),用于心力衰竭的诊断和预后。TRAITER 采用图像分割技术和视觉变换器,从心脏组织细胞核形态图像预测高频的可能性,并从细胞核和 DNA 损伤标记的双重染色图像预测左心室反向重塑(LVRR)的可能性。在使用 9 名患者的 31,158 张图像进行高频预测时,TRAITER 的准确率达到了 83.1%。在使用 46 名患者的 231,840 张图像进行 LVRR 预测时,TRAITER 对单张图像的准确率达到 84.2%,对单个患者的准确率达到 92.9%。TRAITER 在接收者操作特征和精确度-召回曲线方面的表现优于其他神经网络模型。我们的方法有望推动个性化高频医学决策:源代码和数据可从以下链接获取:Https://github.com/HamanoLaboratory/predict-of-HF-and-LVRR.Supplementary information:补充数据可在 Bioinformatics online 上获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TRAITER: transformer-guided diagnosis and prognosis of heart failure using cell nuclear morphology and DNA damage marker.

Motivation: Heart failure (HF), a major cause of morbidity and mortality, necessitates precise diagnostic and prognostic methods.

Results: This study presents a novel deep learning approach, Transformer-based Analysis of Images of Tissue for Effective Remedy (TRAITER), for HF diagnosis and prognosis. Using image segmentation techniques and a Vision Transformer, TRAITER predicts HF likelihood from cardiac tissue cell nuclear morphology images and the potential for left ventricular reverse remodeling (LVRR) from dual-stained images with cell nuclei and DNA damage markers. In HF prediction using 31 158 images from 9 patients, TRAITER achieved 83.1% accuracy. For LVRR prediction with 231 840 images from 46 patients, TRAITER attained 84.2% accuracy for individual images and 92.9% for individual patients. TRAITER outperformed other neural network models in terms of receiver operating characteristics, and precision-recall curves. Our method promises to advance personalized HF medicine decision-making.

Availability and implementation: The source code and data are available at the following link: https://github.com/HamanoLaboratory/predict-of-HF-and-LVRR.

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