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Deep Learning-Based, Multiclass Approach to Cancer Classification on Liquid Biopsy Data

IEEE journal of translational engineering in health and medicine(2024)SCI 3区SCI 4区

Univ Gdansk | Med Univ Gdansk | Gdansk Univ Technol | Vrije Univ Amsterdam

Cited 2|Views18
Abstract
The field of cancer diagnostics has been revolutionized by liquid biopsies, which offer a bridge between laboratory research and clinical settings. These tests are less invasive than traditional biopsies and more convenient than routine imaging methods. Liquid biopsies allow studying of tumor-derived markers in bodily fluids, enabling the development of more precise cancer diagnostic tests for screening, disease monitoring, and therapy personalization. This study presents a multiclass approach based on deep learning to analyze and classify diseases based on blood platelet RNA. Its primary objective is to enhance cancer-type diagnosis in clinical settings by leveraging the power of deep learning combined with high-throughput sequencing of liquid biopsy. Ultimately, the study demonstrates the potential of this approach to accurately identify the patient’s type of cancer. Methods: The developed method classifies patients using heatmap images, generated based on gene expression arranged according to the Kyoto Encyclopedia of Genes and Genomes pathways. The images represent samples of patients with ovarian cancer, endometrial cancer, glioblastoma, non-small cell lung cancer, and sarcoma, as well as cancer patients with brain metastasis. Results: Our deep learning-based models reached 66.51% balanced accuracy when distinguishing between those 6 sites of cancer origin and 90.5% balanced accuracy on a location-specific dataset where cancer types from close locations were grouped. The developed models were further investigated with an explainable artificial intelligence-based approach (XAI) - SHAP. They returned a set of 60 genes with the highest impact on the models’ decision-making process. Conclusions: Our results show that deep-learning methods are a promising opportunity for cancer detection and could support clinicians’ decision-making process in finding the solution for the black-box problem. Clinical and Translational Impact Statement— Utilizing TEPs-based liquid biopsies and deep learning, our study offers a novel approach to early cancer detection, highlighting cancer origin. The integration of Explainable AI reinforces trust in predictive outcomes. Category: Early/Pre-Clinical Research.
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Deep learning,liquid biopsies,tumor educated platelets (TEP),CNN-convolutional neural network,explainable AI
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要点】:本研究提出了一种基于深度学习的多类癌症分类方法,利用液体活检数据中的血小板上RNA表达进行癌症类型的诊断,提高了临床诊断的准确性。

方法】:通过构建基于基因表达热图图像的深度学习模型,对卵巢癌、子宫内膜癌、胶质oblastoma、非小细胞肺癌、肉瘤及脑转移癌患者进行分类。

实验】:使用深度学习模型在区分6种癌症起源的实验中达到了66.51%的平衡准确率,在特定位置癌症类型分组的数据集上达到了90.5%的平衡准确率,并采用SHAP方法解释了影响模型决策的60个关键基因。