Transfer learning drives automatic HER2 scoring on HE-stained WSIs for breast cancer: a multi-cohort study.

IF 7.4 1区 医学 Q1 Medicine
Xiaoping Li, Zhiquan Lin, Chaoran Qiu, Yiwen Zhang, Chuqian Lei, Shaofei Shen, Weibin Zhang, Chan Lai, Weiwen Li, Hui Huang, Tian Qiu
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引用次数: 0

Abstract

Background: Streamlining the clinical procedure of human epidermal growth factor receptor 2 (HER2) examination is challenging. Previous studies neglected the intra-class variability within both HER2-positive and -negative groups and lacked multi-cohort validation. To address this deficiency, this study collected data from multiple cohorts to develop a robust model for HER2 scoring utilizing only Hematoxylin&Eosin-stained whole slide images (WSIs).

Methods: A total of 578 WSIs were collected from five cohorts, including three public and two private datasets. Each WSI underwent adaptive scale cropping. The transfer-learning-based probabilistic aggregation (TL-PA) model and multi-instance learning (MIL)-based models were compared, both of which were trained on Cohort A and validated on Cohorts B-D. The model demonstrating superior performance was further evaluated in the neoadjuvant therapy (NAT) cohort. Scoring performance was assessed using the area under the receiver operating characteristic curve (AUC). Correlation between the model scores and specific grades (HER2 levels, pathological complete response (pCR) status, residual cancer burden (RCB) grades) were evaluated using Spearman rank correlation and Dunn's test. Patch analysis was performed with manually defined features.

Results: For HER2 scoring, the TL-PA significantly outperformed the MIL-based models, achieving robust AUCs in four validation cohorts (Cohort A: 0.75, Cohort B: 0.75, Cohort C: 0.77, Cohort D: 0.77). Correlation analysis confirmed a moderate association between model scores and manual reader-defined HER2-IHC status (Coefficient(Spearman) = 0.37, P(Spearman) = 0.001) as well as RCB grades (Coefficient(Spearman) = 0.45, P(Spearman) = 0.0006). In Cohort NAT, with the non-pCR as the positive control, the AUC was 0.77. Patch analysis revealed a core-to-peritumoral probability decrease pattern as malignancy spread outward from the lesion's core.

Conclusion: TL-PA shows robust generalization for HER2 scoring with minimal data; however, it still inadequately capture intra-class variability. This indicates that future deep-learning endeavors should incorporate more detailed annotations to better align the model's focus with the reasoning of pathologists.

一项多队列研究:迁移学习驱动he染色乳腺癌wsi的自动HER2评分
背景:简化人表皮生长因子受体2 (HER2)检查的临床程序具有挑战性。先前的研究忽略了her2阳性和阴性组的类内变异性,缺乏多队列验证。为了解决这一缺陷,本研究收集了来自多个队列的数据,仅利用苏木精和伊红染色的全切片图像(wsi)建立了一个稳健的HER2评分模型。方法:从5个队列中收集578名wsi,包括3个公共数据集和2个私人数据集。每个WSI进行自适应尺度裁剪。将基于迁移学习的概率聚集(TL-PA)模型和基于多实例学习(MIL)模型进行比较,并在队列A上进行训练,在队列B-D上进行验证。在新辅助治疗(NAT)队列中进一步评估该模型的优越性能。评分表现采用受试者工作特征曲线下面积(AUC)进行评估。采用Spearman秩相关和Dunn检验评估模型评分与特异性分级(HER2水平、病理完全缓解(pCR)状态、残留癌负担(RCB)分级)的相关性。补丁分析是用手动定义的特征进行的。结果:对于HER2评分,TL-PA显著优于基于mil的模型,在四个验证队列(队列A: 0.75,队列B: 0.75,队列C: 0.77,队列D: 0.77)中实现了稳健的auc。相关分析证实,模型评分与手工读者定义的HER2-IHC状态(系数(Spearman) = 0.37, P(Spearman) = 0.001)以及RCB评分(系数(Spearman) = 0.45, P(Spearman) = 0.0006)之间存在中度相关性。在NAT队列中,以非pcr为阳性对照,AUC为0.77。斑块分析显示,当恶性肿瘤从病灶中心向外扩散时,肿瘤中心到肿瘤周围的概率降低。结论:TL-PA在数据最少的情况下对HER2评分具有强大的泛化能力;然而,它仍然不能充分捕捉到类内的可变性。这表明,未来的深度学习努力应该包含更详细的注释,以更好地将模型的重点与病理学家的推理结合起来。
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来源期刊
CiteScore
12.00
自引率
0.00%
发文量
76
审稿时长
12 weeks
期刊介绍: Breast Cancer Research, an international, peer-reviewed online journal, publishes original research, reviews, editorials, and reports. It features open-access research articles of exceptional interest across all areas of biology and medicine relevant to breast cancer. This includes normal mammary gland biology, with a special emphasis on the genetic, biochemical, and cellular basis of breast cancer. In addition to basic research, the journal covers preclinical, translational, and clinical studies with a biological basis, including Phase I and Phase II trials.
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