NACNet: A histology context-aware transformer graph convolution network for predicting treatment response to neoadjuvant chemotherapy in Triple Negative Breast Cancer

IF 5.4 2区 医学 Q1 ENGINEERING, BIOMEDICAL Computerized Medical Imaging and Graphics Pub Date : 2024-11-17 DOI:10.1016/j.compmedimag.2024.102467
Qiang Li , George Teodoro , Yi Jiang , Jun Kong
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Abstract

Neoadjuvant chemotherapy (NAC) response prediction for triple negative breast cancer (TNBC) patients is a challenging task clinically as it requires understanding complex histology interactions within the tumor microenvironment (TME). Digital whole slide images (WSIs) capture detailed tissue information, but their giga-pixel size necessitates computational methods based on multiple instance learning, which typically analyze small, isolated image tiles without the spatial context of the TME. To address this limitation and incorporate TME spatial histology interactions in predicting NAC response for TNBC patients, we developed a histology context-aware transformer graph convolution network (NACNet). Our deep learning method identifies the histopathological labels on individual image tiles from WSIs, constructs a spatial TME graph, and represents each node with features derived from tissue texture and social network analysis. It predicts NAC response using a transformer graph convolution network model enhanced with graph isomorphism network layers. We evaluate our method with WSIs of a cohort of TNBC patient (N=105) and compared its performance with multiple state-of-the-art machine learning and deep learning models, including both graph and non-graph approaches. Our NACNet achieves 90.0% accuracy, 96.0% sensitivity, 88.0% specificity, and an AUC of 0.82, through eight-fold cross-validation, outperforming baseline models. These comprehensive experimental results suggest that NACNet holds strong potential for stratifying TNBC patients by NAC response, thereby helping to prevent overtreatment, improve patient quality of life, reduce treatment cost, and enhance clinical outcomes, marking an important advancement toward personalized breast cancer treatment.
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NACNet:用于预测三阴性乳腺癌新辅助化疗治疗反应的组织学上下文感知变换图卷积网络
三阴性乳腺癌(TNBC)患者的新辅助化疗(NAC)反应预测是一项具有挑战性的临床任务,因为它需要了解肿瘤微环境(TME)中复杂的组织学相互作用。数字全切片图像(WSI)能捕捉到详细的组织信息,但其千兆像素的尺寸使得基于多实例学习的计算方法成为必要,这种方法通常分析的是孤立的小块图像,而不考虑肿瘤微环境的空间背景。为了解决这一局限性,并结合TME空间组织学相互作用来预测TNBC患者的NAC反应,我们开发了一种组织学上下文感知变换图卷积网络(NACNet)。我们的深度学习方法从 WSIs 中识别单个图像瓦片上的组织病理学标签,构建空间 TME 图,并用组织纹理和社交网络分析得出的特征来表示每个节点。该方法使用变压器图卷积网络模型预测 NAC 反应,该模型使用图同构网络层进行增强。我们用一组 TNBC 患者(N=105)的 WSI 评估了我们的方法,并将其性能与多种最先进的机器学习和深度学习模型(包括图和非图方法)进行了比较。通过八倍交叉验证,我们的 NACNet 实现了 90.0% 的准确率、96.0% 的灵敏度、88.0% 的特异性和 0.82 的 AUC,表现优于基线模型。这些全面的实验结果表明,NACNet 在根据 NAC 反应对 TNBC 患者进行分层方面具有强大的潜力,从而有助于防止过度治疗、改善患者生活质量、降低治疗成本和提高临床疗效,标志着乳腺癌个性化治疗取得了重要进展。
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来源期刊
CiteScore
10.70
自引率
3.50%
发文量
71
审稿时长
26 days
期刊介绍: The purpose of the journal Computerized Medical Imaging and Graphics is to act as a source for the exchange of research results concerning algorithmic advances, development, and application of digital imaging in disease detection, diagnosis, intervention, prevention, precision medicine, and population health. Included in the journal will be articles on novel computerized imaging or visualization techniques, including artificial intelligence and machine learning, augmented reality for surgical planning and guidance, big biomedical data visualization, computer-aided diagnosis, computerized-robotic surgery, image-guided therapy, imaging scanning and reconstruction, mobile and tele-imaging, radiomics, and imaging integration and modeling with other information relevant to digital health. The types of biomedical imaging include: magnetic resonance, computed tomography, ultrasound, nuclear medicine, X-ray, microwave, optical and multi-photon microscopy, video and sensory imaging, and the convergence of biomedical images with other non-imaging datasets.
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