利用人工智能和放射组学进行乳腺癌反应预测

Yassine Amkrane, M. Adoui, M. Benjelloun
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引用次数: 7

摘要

乳腺癌是影响全球女性的经常性疾病之一,世界卫生组织披露,仅2018年,全球就有62万多名女性死于乳腺癌,约占女性癌症死亡人数的15%。因此,乳腺癌的诊断是需要及时治疗的主要挑战之一。在这种情况下,多种图像模式,即乳房x光检查,超声检查和磁共振成像(MRI)用于乳腺肿瘤诊断。这种病理的主要治疗方法之一是化疗。然而,由于这种治疗,可能会出现一些继发性影响(脱发、骨质疏松、呕吐等),而且癌症对它没有反应。本文旨在提出一种预测乳腺肿瘤治疗反应的新方法,主要分为三个步骤:MR图像的肿瘤分割;2. 从分割的肿瘤中提取特征,以生成完整的可利用数据库;3.使用深度和机器学习架构来计算肿瘤反应预测模型。实验结果应用于公开的秦乳腺癌DCE-MRI数据集。
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Towards Breast Cancer Response Prediction using Artificial Intelligence and Radiomics
With breast cancer being one of the recurring diseases affecting women around the globe, the World Health Organization disclosed that more than 620,000 women died from breast cancer in the world in 2018 alone, which represents approximately 15% of all female cancer deaths. Thus, breast cancer diagnosis presents one of the main challenges that need to get timely treatments. In this context, multiple image modalities, namely mammography, echography and magnetic resonance Imaging (MRI) are used for breast tumor diagnosis. One of the main treatments of this pathology is chemotherapy. However, several secondary effects (hair loss, osteoporosis, vomiting, etc.) can occur due this treatment, and cancer can not respond to it. This paper aims to suggest a novel method to predict breast tumor response to treatment, using three main steps: 1. Tumor segmentation from MR images ; 2. Extraction of features from segmented tumors in order to generate a complete and exploitable database ; 3. The use of deep and machine learning architectures to compute tumor-response prediction models. Experimental results are applied using a public QIN Breast DCE-MRI dataset of breast cancer patients.
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