利用成本意识深度学习模型优化计算机辅助诊断。

Q2 Computer Science
Charmi Patel, Yiyang Wang, Thiruvarangan Ramaraj, Roselyne Tchoua, Jacob Furst, Daniela Raicu
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引用次数: 0

摘要

用于计算机辅助诊断(CAD)的经典机器学习和深度学习模型通常侧重于整体分类性能,在训练过程中同等对待误分类错误(假阴性和假阳性)。这种统一的处理方式忽略了与每种错误相关的不同成本,导致了决策的次优化,尤其是在医疗领域,提高预测灵敏度而不严重影响整体准确性非常重要。本研究介绍了一种基于深度学习的新型 CAD 系统,该系统在激活函数中加入了成本敏感参数。通过将我们的方法应用于两个医学影像数据集,我们提出的研究表明,在保持肺图像数据库联盟(LIDC)和乳腺癌组织学数据库(BreakHis)总体准确性的同时,灵敏度在统计学上分别显著提高了 3.84% 和 5.4%。我们的研究结果强调了将对成本敏感的参数整合到未来 CAD 系统中的重要性,以优化性能并最终降低成本和改善患者预后。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing Computer-Aided Diagnosis with Cost-Aware Deep Learning Models.

Classical machine learning and deep learning models for Computer-Aided Diagnosis (CAD) commonly focus on overall classification performance, treating misclassification errors (false negatives and false positives) equally during training. This uniform treatment overlooks the distinct costs associated with each type of error, leading to suboptimal decision-making, particularly in the medical domain where it is important to improve the prediction sensitivity without significantly compromising overall accuracy. This study introduces a novel deep learning-based CAD system that incorporates a cost-sensitive parameter into the activation function. By applying our methodologies to two medical imaging datasets, our proposed study shows statistically significant increases of 3.84% and 5.4% in sensitivity while maintaining overall accuracy for Lung Image Database Consortium (LIDC) and Breast Cancer Histological Database (BreakHis), respectively. Our findings underscore the significance of integrating cost-sensitive parameters into future CAD systems to optimize performance and ultimately reduce costs and improve patient outcomes.

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CiteScore
4.50
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