基于深度学习的结直肠癌染色体不稳定性组织学预测。

IF 3.6 3区 医学 Q2 ONCOLOGY American journal of cancer research Pub Date : 2024-09-15 eCollection Date: 2024-01-01 DOI:10.62347/JYND6488
Dongwoo Hyeon, Younghoon Kim, Yaeeun Hwang, Jeong Mo Bae, Gyeong Hoon Kang, Kwangsoo Kim
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引用次数: 0

摘要

结直肠癌(CRC)是一种致命的恶性肿瘤,也是全球癌症相关死亡的主要原因。染色体不稳定性(CIN)是导致 CRC 基因组不稳定的关键因素,其特点是非整倍体和体细胞拷贝数改变。本研究旨在利用全切片图像(WSI)中的组织学数据预测 CRC 中的 CIN。研究人员对来自 TCGA 的 CRC 样本进行了分析,利用卷积神经网络(CNN)和形态学分析将肿瘤区域划分为瓦片和细胞核,以提取特征。开发了二元分类模型,根据滑动层特征区分非整倍性得分(AS)的高低。分析对象包括 313 名患者和 315 个 WSI,共获得超过 350,000 个肿瘤平片和近 270 万个肿瘤细胞核。在组织病理学图像上预先训练的 ResNet18-SSL 模型在基于瓦片的 AS 预测中表现出了卓越的准确性,而 DenseNet121 则在基于细胞核的预测中表现出色。将基于 CNN 的特征与形态学特征相结合,提高了基于细胞核预测的分类准确性。此外,还观察到形态学特征与拷贝数特征之间存在明显的相关性。核特征的无监督聚类显示,不同组别与 CIN 和 TP53 突变有显著相关性。这项研究强调了来自 WSI 的组织学特征预测 CRC 样本中 CIN 的潜力。核特征分析与深度学习技术相结合,为 CIN 预测提供了一种稳健的方法,凸显了进一步研究组织学表型与分子表型之间关系的重要性。
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Deep learning-based histological predictions of chromosomal instability in colorectal cancer.

Colorectal cancer (CRC) is a lethal malignancy and a leading cause of cancer-related mortality worldwide. Chromosomal instability (CIN) is a key driver of genomic instability in CRC and is characterized by aneuploidy and somatic copy-number alterations. This study aimed to predict CIN in CRC using histological data from whole slide images (WSIs). CRC samples from TCGA were analyzed, with tumor regions segmented into tiles and nuclei for feature extraction using convolutional neural network (CNN) and morphologic analysis. Binary classification models were developed to distinguish high and low aneuploidy scores (AS) based on slide-level features. The analysis included 313 patients with 315 WSIs, resulting in over 350,000 tumor tiles and nearly 2.7 million tumor cell nuclei. The ResNet18-SSL model, pre-trained on histopathological images, demonstrated superior accuracy in tile-based AS prediction, while DenseNet121 excelled in nucleus-based prediction. Combining CNN-based and morphological features enhanced the classification accuracy of nucleus-based predictions. Additionally, significant correlations were observed between morphological features and copy-number signatures. Unsupervised clustering of nuclear features revealed that distinct groups are significantly correlated with CIN and TP53 mutations. This study underscores the potential of histological features from WSIs to predict CIN in CRC samples. Nuclear feature analysis, combined with deep-learning techniques, offers a robust method for CIN prediction, highlighting the importance of further research into the relationships between histological and molecular phenotypes.

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期刊介绍: The American Journal of Cancer Research (AJCR) (ISSN 2156-6976), is an independent open access, online only journal to facilitate rapid dissemination of novel discoveries in basic science and treatment of cancer. It was founded by a group of scientists for cancer research and clinical academic oncologists from around the world, who are devoted to the promotion and advancement of our understanding of the cancer and its treatment. The scope of AJCR is intended to encompass that of multi-disciplinary researchers from any scientific discipline where the primary focus of the research is to increase and integrate knowledge about etiology and molecular mechanisms of carcinogenesis with the ultimate aim of advancing the cure and prevention of this increasingly devastating disease. To achieve these aims AJCR will publish review articles, original articles and new techniques in cancer research and therapy. It will also publish hypothesis, case reports and letter to the editor. Unlike most other open access online journals, AJCR will keep most of the traditional features of paper print that we are all familiar with, such as continuous volume, issue numbers, as well as continuous page numbers to retain our comfortable familiarity towards an academic journal.
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