Robust ROI Detection in Whole Slide Images Guided by Pathologists' Viewing Patterns.

Fatemeh Ghezloo, Oliver H Chang, Stevan R Knezevich, Kristin C Shaw, Kia Gianni Thigpen, Lisa M Reisch, Linda G Shapiro, Joann G Elmore
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Abstract

Deep learning techniques offer improvements in computer-aided diagnosis systems. However, acquiring image domain annotations is challenging due to the knowledge and commitment required of expert pathologists. Pathologists often identify regions in whole slide images with diagnostic relevance rather than examining the entire slide, with a positive correlation between the time spent on these critical image regions and diagnostic accuracy. In this paper, a heatmap is generated to represent pathologists' viewing patterns during diagnosis and used to guide a deep learning architecture during training. The proposed system outperforms traditional approaches based on color and texture image characteristics, integrating pathologists' domain expertise to enhance region of interest detection without needing individual case annotations. Evaluating our best model, a U-Net model with a pre-trained ResNet-18 encoder, on a skin biopsy whole slide image dataset for melanoma diagnosis, shows its potential in detecting regions of interest, surpassing conventional methods with an increase of 20%, 11%, 22%, and 12% in precision, recall, F1-score, and Intersection over Union, respectively. In a clinical evaluation, three dermatopathologists agreed on the model's effectiveness in replicating pathologists' diagnostic viewing behavior and accurately identifying critical regions. Finally, our study demonstrates that incorporating heatmaps as supplementary signals can enhance the performance of computer-aided diagnosis systems. Without the availability of eye tracking data, identifying precise focus areas is challenging, but our approach shows promise in assisting pathologists in improving diagnostic accuracy and efficiency, streamlining annotation processes, and aiding the training of new pathologists.

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以病理学家的观察模式为指导,在整张切片图像中进行可靠的 ROI 检测。
深度学习技术可改善计算机辅助诊断系统。然而,由于病理专家需要大量的知识和投入,获取图像域注释具有挑战性。病理学家通常会在整张切片图像中识别与诊断相关的区域,而不是检查整张切片,在这些关键图像区域上花费的时间与诊断准确率之间存在正相关。本文生成了一个热图来表示病理学家在诊断过程中的观察模式,并在训练过程中用于指导深度学习架构。所提出的系统优于基于颜色和纹理图像特征的传统方法,它整合了病理学家的专业领域知识,无需单个病例注释即可增强感兴趣区检测。在用于黑色素瘤诊断的皮肤活检全切片图像数据集上评估了我们的最佳模型,即带有预训练的 ResNet-18 编码器的 U-Net 模型,结果表明该模型在检测感兴趣区方面具有潜力,其精确度、召回率、F1 分数和交集比 Union 分别提高了 20%、11%、22% 和 12%,超过了传统方法。在临床评估中,三位皮肤病理学家一致认为该模型能有效复制病理学家的诊断观察行为,并准确识别关键区域。最后,我们的研究表明,将热图作为补充信号可以提高计算机辅助诊断系统的性能。在没有眼动跟踪数据的情况下,确定精确的重点区域具有挑战性,但我们的方法在协助病理学家提高诊断准确性和效率、简化注释流程以及帮助培训新病理学家方面显示出了前景。
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