利用深度学习神经网络准确识别复杂临床前模型中的癌细胞:无转染方法

IF 3.2 3区 生物学 Q3 MATERIALS SCIENCE, BIOMATERIALS Advanced biology Pub Date : 2024-08-12 DOI:10.1002/adbi.202400034
Marilisa Cortesi, Dongli Liu, Elyse Powell, Ellen Barlow, Kristina Warton, Caroline E. Ford
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引用次数: 0

摘要

三维共培养是体外生物医学研究的关键工具,因为它们能更接近地再现体内环境,同时能更严格地控制培养物的成分和实验条件。然而,用于分析这些模型的技术有限,阻碍了它们的广泛应用。特别是如何分离不同类型细胞的贡献是一个基本挑战。在这项工作中,介绍了 ORACLE(卵巢癌细胞识别),这是一种经过训练的深度神经网络,可根据细胞核的形状区分卵巢癌细胞和健康细胞。进行的广泛验证包括多个细胞系和患者培养物,以确定所有主要潜在混杂因素的影响。在整个分析过程中,ORACLE 保持了较高的准确性和可靠性(F1 分数大于 0.9,ROC 曲线下面积分数 = 0.99),证明了 ORACLE 在检测和分类任务中的有效性。ORACLE可免费获取(https://github.com/MarilisaCortesi/ORACLE/tree/main),并可用于识别卵巢癌细胞系和原代患者衍生细胞。这一功能是ORACLE独有的,因此首次实现了对完全由患者来源细胞组成的体外联合培养物的分析。
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Accurate Identification of Cancer Cells in Complex Pre-Clinical Models Using a Deep-Learning Neural Network: A Transfection-Free Approach

3D co-cultures are key tools for in vitro biomedical research as they recapitulate more closely the in vivo environment while allowing a tighter control on the culture's composition and experimental conditions. The limited technologies available for the analysis of these models, however, hamper their widespread application. The separation of the contribution of the different cell types, in particular, is a fundamental challenge. In this work, ORACLE (OvaRiAn Cancer ceLl rEcognition) is presented, a deep neural network trained to distinguish between ovarian cancer and healthy cells based on the shape of their nucleus. The extensive validation that are conducted includes multiple cell lines and patient-derived cultures to characterize the effect of all the major potential confounding factors. High accuracy and reliability are maintained throughout the analysis (F1score> 0.9 and Area under the ROC curve -ROC-AUC- score = 0.99) demonstrating ORACLE's effectiveness with this detection and classification task. ORACLE is freely available (https://github.com/MarilisaCortesi/ORACLE/tree/main) and can be used to recognize both ovarian cancer cell lines and primary patient-derived cells. This feature is unique to ORACLE and thus enables for the first time the analysis of in vitro co-cultures comprised solely of patient-derived cells.

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来源期刊
Advanced biology
Advanced biology Biochemistry, Genetics and Molecular Biology-Biochemistry, Genetics and Molecular Biology (all)
CiteScore
6.60
自引率
0.00%
发文量
130
期刊最新文献
A Novel UBM/SIS Composite Biological Scaffold for 2-Year Abdominal Defect Repairing and Strength Recovery in Canine Model. Advanced 2D Nanomaterials for Phototheranostics of Breast Cancer: A Paradigm Shift. Predicting Clinical Outcomes of SARS-CoV-2 Drug Efficacy with a High-Throughput Human Airway Microphysiological System (Adv. Biology 11/2024) Accurate Identification of Cancer Cells in Complex Pre-Clinical Models Using a Deep-Learning Neural Network: A Transfection-Free Approach (Adv. Biology 11/2024) Masthead: (Adv. Biology 11/2024)
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