Random forest-based out-of-distribution detection for robust lung cancer segmentation.

Aneesh Rangnekar, Harini Veeraraghavan
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Abstract

Accurate detection and segmentation of cancerous lesions from computed tomography (CT) scans is essential for automated treatment planning and cancer treatment response assessment. Transformer-based models with self-supervised pretraining can produce reliably accurate segmentation from in-distribution (ID) data but degrade when applied to out-of-distribution (OOD) datasets. We address this challenge with RF-Deep, a random forest classifier that utilizes deep features from a pretrained transformer encoder of the segmentation model to detect OOD scans and enhance segmentation reliability. The segmentation model comprises a Swin Transformer encoder, pretrained with masked image modeling (SimMIM) on 10,432 unlabeled 3D CT scans covering cancerous and non-cancerous conditions, with a convolution decoder, trained to segment lung cancers in 317 3D scans. Independent testing was performed on 603 3D CT public datasets that included one ID dataset and four OOD datasets comprising chest CTs with pulmonary embolism (PE) and COVID-19, and abdominal CTs with kidney cancers and healthy volunteers. RF-Deep detected OOD cases with a FPR95 of 18.26%, 27.66%, and < 1.0% on PE, COVID-19, and abdominal CTs, consistently outperforming established OOD approaches. The RF-Deep classifier provides a simple and effective approach to enhance reliability of cancer segmentation in ID and OOD scenarios.

基于随机森林的分布外检测稳健肺癌分割。
从计算机断层扫描(CT)中准确检测和分割癌病变对于自动化治疗计划和癌症治疗反应评估至关重要。基于变压器的自监督预训练模型可以从分布内(ID)数据中产生可靠准确的分割,但当应用于分布外(OOD)数据集时,效果会下降。我们利用随机森林分类器RF-Deep解决了这一挑战,该分类器利用分割模型预训练的变压器编码器的深度特征来检测OOD扫描并提高分割可靠性。分割模型包括Swin Transformer编码器和卷积解码器,前者在10432个未标记的3D CT扫描(包括癌症和非癌症情况)上进行了蒙面图像建模(SimMIM)预训练,后者在317个3D扫描中进行了肺癌分割训练。对603个3D CT公共数据集进行独立测试,包括1个ID数据集和4个OOD数据集,包括肺栓塞(PE)和COVID-19的胸部CT,以及肾癌和健康志愿者的腹部CT。RF-Deep在PE、COVID-19和腹部ct上检测到OOD病例的FPR95分别为18.26%、27.66%和< 1.0%,一直优于现有的OOD方法。RF-Deep分类器提供了一种简单有效的方法来提高ID和OOD场景下癌症分割的可靠性。
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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