Bridging Histopathology and Radiomics Toward Prognosis of Metastasis in Early Breast Cancer.

IF 2.9 4区 工程技术 Q3 MATERIALS SCIENCE, MULTIDISCIPLINARY
Marko Radulović, Xingyu Li, Goran J Djuričić, Jelena Milovanović, Nataša Todorović Raković, Tijana Vujasinović, Dušan Banovac, Ksenija Kanjer
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引用次数: 0

Abstract

Tumor histomorphology is crucial for the prognostication of breast cancer outcomes because it contains histological, cellular, and molecular tumor heterogeneity related to metastatic potential. To enhance breast cancer prognosis, we aimed to apply radiomics analysis-traditionally used in 3D scans-to 2D histopathology slides. This study tested radiomics analysis in a cohort of 92 breast tumor specimens for outcome prognosis, addressing -omics dimensionality by comparing models with moderate and high feature counts, using least absolute shrinkage and selection operator for feature selection and machine learning for prognostic modeling. In the test folds, models with radiomics features [area under the curves (AUCs) range 0.799-0.823] significantly outperformed the benchmark model, which only included clinicopathological (CP) parameters (AUC = 0.584). The moderate-dimensionality model with 11 CP + 93 radiomics features matched the performance of the highly dimensional models with 1,208 radiomics or 11 CP + 1,208 radiomics features, showing average AUCs of 0.823, 0.799, and 0.807 and accuracies of 79.8, 79.3, and 76.6%, respectively. In conclusion, our application of deep texture radiomics analysis to 2D histopathology showed strong prognostic performance with a moderate-dimensionality model, surpassing a benchmark based on standard CP parameters, indicating that this deep texture histomics approach could potentially become a valuable prognostic tool.

架起组织病理学与放射组学的桥梁,预测早期乳腺癌的转移。
肿瘤组织形态学对于乳腺癌的预后至关重要,因为它包含了与转移潜力相关的组织学、细胞和分子肿瘤异质性。为了提高乳腺癌的预后,我们旨在将传统上用于三维扫描的放射组学分析应用于二维组织病理学切片。本研究在一组 92 例乳腺肿瘤标本中测试了放射组学分析的预后效果,通过比较中等和高特征数的模型来解决组学维度问题,使用最小绝对收缩和选择算子进行特征选择,并使用机器学习进行预后建模。在测试折叠中,具有放射组学特征的模型[曲线下面积(AUC)范围为0.799-0.823]明显优于仅包含临床病理(CP)参数的基准模型(AUC = 0.584)。具有 11 个 CP + 93 个放射组学特征的中等维度模型与具有 1,208 个放射组学特征或 11 个 CP + 1,208 个放射组学特征的高维度模型性能相当,平均 AUC 分别为 0.823、0.799 和 0.807,准确率分别为 79.8、79.3 和 76.6%。总之,我们将深度纹理放射组学分析应用于二维组织病理学,在中等维度模型下显示出很强的预后性能,超过了基于标准CP参数的基准,表明这种深度纹理组学方法有可能成为一种有价值的预后工具。
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来源期刊
Microscopy and Microanalysis
Microscopy and Microanalysis 工程技术-材料科学:综合
CiteScore
1.10
自引率
10.70%
发文量
1391
审稿时长
6 months
期刊介绍: Microscopy and Microanalysis publishes original research papers in the fields of microscopy, imaging, and compositional analysis. This distinguished international forum is intended for microscopists in both biology and materials science. The journal provides significant articles that describe new and existing techniques and instrumentation, as well as the applications of these to the imaging and analysis of microstructure. Microscopy and Microanalysis also includes review articles, letters to the editor, and book reviews.
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