基于弱监督学习的三维胸部 CT 扫描病理检测和定位。

IF 3.2 2区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Medical physics Pub Date : 2024-08-14 DOI:10.1002/mp.17302
Aissam Djahnine, Emilien Jupin-Delevaux, Olivier Nempont, Salim Aymeric Si-Mohamed, Fabien Craighero, Vincent Cottin, Philippe Douek, Alexandre Popoff, Loic Boussel
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引用次数: 0

摘要

背景:最近在异常检测方面取得的进展为新型放射阅片辅助工具铺平了道路,这些工具支持对检查结果的识别,旨在节省时间。目的:鉴于最近对多病理识别的兴趣和发展,我们提出了一种基于最新对比自监督方法的新方法,用于识别多种胸部相关异常,包括低肺密度区("LLDA")、合并("CONS")、结节("NOD")和间质模式("IP")。我们的方法通过提供三维定位,提醒放射科医生注意计算机断层扫描(CT)扫描中的异常区域:我们引入了一种新方法,用于对三维胸部 CT 扫描中的多种胸部病变进行分类和定位。我们的目标是区分四种常见的胸部相关异常:"LLDA"、"CONS"、"NOD"、"IP "和 "NORMAL"。该方法基于基于三维补丁的分类器,并利用最新的对比自监督方法和微调分类头对 Resnet 骨干编码器进行预训练。我们利用 SimCLR 对比框架对随机选择的未标注数据集进行预训练,然后在标注数据集上对其进行微调。在推理过程中,该分类器会为整个 CT 容积中的每个异常生成概率图,然后将其汇总,生成多标签患者级预测结果。我们比较了不同的训练策略,包括随机初始化、ImageNet 权重初始化、冻结 SimCLR 预训练权重和微调 SimCLR 预训练权重。每种训练策略都在验证集上进行评估,以选择超参数,并在测试集上进行测试。此外,我们还探索了用于三维病理定位的微调 SimCLR 预训练分类器,并进行了定性评估:在多标签和二元(即正常与异常)设置中,我们的方法在超参数选择方面对 111 张胸部扫描进行了验证,随后在 251 张具有多种异常的胸部扫描上进行了测试,其 AUROC 分别为 0.931(95% 置信区间 [CI]:[0.9034, 0.9557],p $ p$ -value < 0.001)和 0.963(95% 置信区间 [CI]:[0.952, 0.976],p $ p$ -value < 0.001)。值得注意的是,对于两种异常,我们的方法超过了接收者操作特征下面积(AUROC)阈值 0.9:IP(0.974)和 LLDA(0.952),而 NOD 和 CONS 分别达到了 0.853 和 0.791。此外,我们的结果还凸显了在补丁分类器中加入对比预训练的优越性,其表现优于 Imagenet 预训练权重和未初始化权重的非预训练同行(F1 分数分别为 0.943、0.792 和 0.677)。定性分析结果表明,该方法的定位完整率达到了令人满意的 88.8%,误报准确率保持在 88.3%:结论:所提出的方法整合了用于预训练的自监督学习算法,利用基于斑块的方法进行三维病理定位,并开发了一种在患者层面进行多标签预测的聚合方法。该方法有望在一次扫描中有效检测和定位多个异常点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Weakly-supervised learning-based pathology detection and localization in 3D chest CT scans

Background

Recent advancements in anomaly detection have paved the way for novel radiological reading assistance tools that support the identification of findings, aimed at saving time. The clinical adoption of such applications requires a low rate of false positives while maintaining high sensitivity.

Purpose

In light of recent interest and development in multi pathology identification, we present a novel method, based on a recent contrastive self-supervised approach, for multiple chest-related abnormality identification including low lung density area (“LLDA”), consolidation (“CONS”), nodules (“NOD”) and interstitial pattern (“IP”). Our approach alerts radiologists about abnormal regions within a computed tomography (CT) scan by providing 3D localization.

Methods

We introduce a new method for the classification and localization of multiple chest pathologies in 3D Chest CT scans. Our goal is to distinguish four common chest-related abnormalities: “LLDA”, “CONS”, “NOD”, “IP” and “NORMAL”. This method is based on a 3D patch-based classifier with a Resnet backbone encoder pretrained leveraging recent contrastive self supervised approach and a fine-tuned classification head. We leverage the SimCLR contrastive framework for pretraining on an unannotated dataset of randomly selected patches and we then fine-tune it on a labeled dataset. During inference, this classifier generates probability maps for each abnormality across the CT volume, which are aggregated to produce a multi-label patient-level prediction. We compare different training strategies, including random initialization, ImageNet weight initialization, frozen SimCLR pretrained weights and fine-tuned SimCLR pretrained weights. Each training strategy is evaluated on a validation set for hyperparameter selection and tested on a test set. Additionally, we explore the fine-tuned SimCLR pretrained classifier for 3D pathology localization and conduct qualitative evaluation.

Results

Validated on 111 chest scans for hyperparameter selection and subsequently tested on 251 chest scans with multi-abnormalities, our method achieves an AUROC of 0.931 (95% confidence interval [CI]: [0.9034, 0.9557], p $ p$ -value < 0.001) and 0.963 (95% CI: [0.952, 0.976], p $ p$ -value < 0.001) in the multi-label and binary (i.e., normal versus abnormal) settings, respectively. Notably, our method surpasses the area under the receiver operating characteristic (AUROC) threshold of 0.9 for two abnormalities: IP (0.974) and LLDA (0.952), while achieving values of 0.853 and 0.791 for NOD and CONS, respectively. Furthermore, our results highlight the superiority of incorporating contrastive pretraining within the patch classifier, outperforming Imagenet pretraining weights and non-pretrained counterparts with uninitialized weights (F1 score = 0.943, 0.792, and 0.677 respectively). Qualitatively, the method achieved a satisfactory 88.8% completeness rate in localization and maintained an 88.3% accuracy rate against false positives.

Conclusions

The proposed method integrates self-supervised learning algorithms for pretraining, utilizes a patch-based approach for 3D pathology localization and develops an aggregation method for multi-label prediction at patient-level. It shows promise in efficiently detecting and localizing multiple anomalies within a single scan.

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来源期刊
Medical physics
Medical physics 医学-核医学
CiteScore
6.80
自引率
15.80%
发文量
660
审稿时长
1.7 months
期刊介绍: Medical Physics publishes original, high impact physics, imaging science, and engineering research that advances patient diagnosis and therapy through contributions in 1) Basic science developments with high potential for clinical translation 2) Clinical applications of cutting edge engineering and physics innovations 3) Broadly applicable and innovative clinical physics developments Medical Physics is a journal of global scope and reach. By publishing in Medical Physics your research will reach an international, multidisciplinary audience including practicing medical physicists as well as physics- and engineering based translational scientists. We work closely with authors of promising articles to improve their quality.
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