Weakly-supervised deep learning models enable HER2-low prediction from H &E stained slides.

IF 7.4 1区 医学 Q1 Medicine
Renan Valieris, Luan Martins, Alexandre Defelicibus, Adriana Passos Bueno, Cynthia Aparecida Bueno de Toledo Osorio, Dirce Carraro, Emmanuel Dias-Neto, Rafael A Rosales, Jose Marcio Barros de Figueiredo, Israel Tojal da Silva
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引用次数: 0

Abstract

Background: Human epidermal growth factor receptor 2 (HER2)-low breast cancer has emerged as a new subtype of tumor, for which novel antibody-drug conjugates have shown beneficial effects. Assessment of HER2 requires several immunohistochemistry tests with an additional in situ hybridization test if a case is classified as HER2 2+. Therefore, novel cost-effective methods to speed up the HER2 assessment are highly desirable.

Methods: We used a self-supervised attention-based weakly supervised method to predict HER2-low directly from 1437 histopathological images from 1351 breast cancer patients. We built six distinct models to explore the ability of classifiers to distinguish between the HER2-negative, HER2-low, and HER2-high classes in different scenarios. The attention-based model was used to comprehend the decision-making process aimed at relevant tissue regions.

Results: Our results indicate that the effectiveness of classification models hinges on the consistency and dependability of assay-based tests for HER2, as the outcomes from these tests are utilized as the baseline truth for training our models. Through the use of explainable AI, we reveal histologic patterns associated with the HER2 subtypes.

Conclusion: Our findings offer a demonstration of how deep learning technologies can be applied to identify HER2 subgroup statuses, potentially enriching the toolkit available for clinical decision-making in oncology.

弱监督深度学习模型可从 H & E 染色切片中预测 HER2 低值。
背景:人表皮生长因子受体 2(HER2)-低乳腺癌已成为一种新的肿瘤亚型,新型抗体-药物共轭物已对其产生有益影响。评估 HER2 需要进行多次免疫组化检测,如果病例被归类为 HER2 2+,还需要进行一次原位杂交检测。因此,加速 HER2 评估的经济有效的新方法非常可取:我们使用了一种基于注意力的自监督弱监督方法,直接从来自 1351 名乳腺癌患者的 1437 张组织病理学图像中预测 HER2 低值。我们建立了六个不同的模型,以探索分类器在不同情况下区分 HER2 阴性、HER2-低和 HER2-高类别的能力。基于注意力的模型用于理解针对相关组织区域的决策过程:我们的研究结果表明,分类模型的有效性取决于基于化验的 HER2 检测结果的一致性和可靠性,因为这些检测结果被用作训练模型的基准真理。通过使用可解释人工智能,我们揭示了与 HER2 亚型相关的组织学模式:我们的研究结果展示了如何将深度学习技术应用于识别 HER2 亚组状态,从而有可能丰富肿瘤学临床决策的工具包。
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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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