论文标题

肺部病变的分层分类:一项大型无线电研究研究

Hierarchical Classification of Pulmonary Lesions: A Large-Scale Radio-Pathomics Study

论文作者

Yang, Jiancheng, Gao, Mingze, Kuang, Kaiming, Ni, Bingbing, She, Yunlang, Xie, Dong, Chen, Chang

论文摘要

计算机断层扫描(CT)的肺部病变的诊断对肺癌相关疾病的临床决策既重要,又不具有挑战性。深度学习在计算机辅助诊断(CADX)领域取得了巨大的成功,而由于放射学诊断的困难,它遭受了标签歧义。 Considering that invasive pathological analysis serves as the clinical golden standard of lung cancer diagnosis, in this study, we solve the label ambiguity issue via a large-scale radio-pathomics dataset containing 5,134 radiological CT images with pathologically confirmed labels, including cancers (e.g., invasive/non-invasive adenocarcinoma, squamous carcinoma) and non-cancer diseases (例如,结核病,哈马托马瘤)。该回顾性数据集(称为肺部 - 雷神),可以开发和验证准确的深度学习系统,以通过非侵入性程序(即放射学CT扫描)预测侵入性病理标签。开发了一种三级分层分类系统,用于肺部病变,涵盖与癌症相关诊断中的大多数疾病。我们探索了该数据集上的几种用于层次分类的技术,并提出了一种泄漏的密集层次结构方法,并在实验中有效地有效性。我们的研究在数据量表(较大6倍),疾病的全面和等级方面极大地优于先前的艺术。有希望的结果表明,有可能促进精确医学的潜力。

Diagnosis of pulmonary lesions from computed tomography (CT) is important but challenging for clinical decision making in lung cancer related diseases. Deep learning has achieved great success in computer aided diagnosis (CADx) area for lung cancer, whereas it suffers from label ambiguity due to the difficulty in the radiological diagnosis. Considering that invasive pathological analysis serves as the clinical golden standard of lung cancer diagnosis, in this study, we solve the label ambiguity issue via a large-scale radio-pathomics dataset containing 5,134 radiological CT images with pathologically confirmed labels, including cancers (e.g., invasive/non-invasive adenocarcinoma, squamous carcinoma) and non-cancer diseases (e.g., tuberculosis, hamartoma). This retrospective dataset, named Pulmonary-RadPath, enables development and validation of accurate deep learning systems to predict invasive pathological labels with a non-invasive procedure, i.e., radiological CT scans. A three-level hierarchical classification system for pulmonary lesions is developed, which covers most diseases in cancer-related diagnosis. We explore several techniques for hierarchical classification on this dataset, and propose a Leaky Dense Hierarchy approach with proven effectiveness in experiments. Our study significantly outperforms prior arts in terms of data scales (6x larger), disease comprehensiveness and hierarchies. The promising results suggest the potentials to facilitate precision medicine.

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