Deep Learning Analysis for Predicting Tumor Spread through Air Space in Early-Stage Lung Adenocarcinoma Pathology Images

Cancers Pub Date : 2024-06-03 DOI:10.3390/cancers16112132
De-Xiang Ou, Chao-Wen Lu, Li-Wei Chen, Wen-Yao Lee, Hsiang-Wei Hu, Jen-Hao Chuang, Mong-Wei Lin, Kuan-Yu Chen, Ling-Ying Chiu, Jin-Shing Chen, Chung-Ming Chen, Min-Shu Hsieh
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Abstract

The presence of spread through air spaces (STASs) in early-stage lung adenocarcinoma is a significant prognostic factor associated with disease recurrence and poor outcomes. Although current STAS detection methods rely on pathological examinations, the advent of artificial intelligence (AI) offers opportunities for automated histopathological image analysis. This study developed a deep learning (DL) model for STAS prediction and investigated the correlation between the prediction results and patient outcomes. To develop the DL-based STAS prediction model, 1053 digital pathology whole-slide images (WSIs) from the competition dataset were enrolled in the training set, and 227 WSIs from the National Taiwan University Hospital were enrolled for external validation. A YOLOv5-based framework comprising preprocessing, candidate detection, false-positive reduction, and patient-based prediction was proposed for STAS prediction. The model achieved an area under the curve (AUC) of 0.83 in predicting STAS presence, with 72% accuracy, 81% sensitivity, and 63% specificity. Additionally, the DL model demonstrated a prognostic value in disease-free survival compared to that of pathological evaluation. These findings suggest that DL-based STAS prediction could serve as an adjunctive screening tool and facilitate clinical decision-making in patients with early-stage lung adenocarcinoma.
通过深度学习分析预测早期肺腺癌病理图像中肿瘤通过空气空间扩散的情况
早期肺腺癌出现气隙扩散(STAS)是一个重要的预后因素,与疾病复发和不良预后有关。尽管目前的STAS检测方法依赖于病理学检查,但人工智能(AI)的出现为组织病理学图像的自动分析提供了机会。本研究开发了一种用于 STAS 预测的深度学习(DL)模型,并研究了预测结果与患者预后之间的相关性。为了开发基于深度学习的STAS预测模型,1053张来自竞赛数据集的数字病理全切片图像(WSI)被纳入训练集,227张来自台湾大学医院的WSI被纳入外部验证。针对 STAS 预测提出了一个基于 YOLOv5 的框架,包括预处理、候选检测、降低假阳性和基于患者的预测。该模型预测 STAS 存在的曲线下面积(AUC)为 0.83,准确率为 72%,灵敏度为 81%,特异性为 63%。此外,与病理评估相比,DL 模型在无病生存方面具有预后价值。这些研究结果表明,基于 DL 的 STAS 预测可作为一种辅助筛查工具,有助于早期肺腺癌患者的临床决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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