Enhanced NSCLC subtyping and staging through attention-augmented multi-task deep learning: A novel diagnostic tool.

IF 3.7 2区 医学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS International Journal of Medical Informatics Pub Date : 2024-11-05 DOI:10.1016/j.ijmedinf.2024.105694
Runhuang Yang, Weiming Li, Siqi Yu, Zhiyuan Wu, Haiping Zhang, Xiangtong Liu, Lixin Tao, Xia Li, Jian Huang, Xiuhua Guo
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Abstract

Objectives: The objective of this study is to develop a novel multi-task learning approach with attention encoders for classifying histologic subtypes and clinical stages of non-small cell lung cancer (NSCLC), with superior performance compared to currently popular deep-learning models.

Material and methods: Data were collected from six publicly available datasets in The Cancer Imaging Archive (TCIA). Following the inclusion and exclusion criteria, a total of 4548 CT slices from 758 cases were allocated. We evaluated multiple multi-task learning models that integrate attention mechanisms to resolve challenges in NSCLC subtype classification and clinical staging. These models utilized convolution-based modules in their shared layers for feature extraction, while the task layers were dedicated to histological subtype classification and staging. Each branch sequentially processed features through convolution-based and attention-based modules prior to classification.

Results: Our study evaluated 758 NSCLC patients (mean age, 66.2 years ± 10.3; 473 men), spanning ADC and SCC cases. In the classification of histological subtypes and clinical staging of NSCLC, the MobileNet-based multi-task learning model enhanced with attention mechanisms (MN-MTL-A) demonstrated superior performance, achieving Area Under the Curve (AUC) scores of 0.963 (95 % CI: 0.943, 0.981) and 0.966 (95 % CI: 0.945, 0.982) for each task, respectively. The model significantly surpassed its counterparts lacking attention mechanisms and those configured for single-task learning, as evidenced by P-values of 0.01 or less for both tasks, according to DeLong's test.

Conclusions: The integration of attention encoder blocks into our multi-task learning network significantly enhanced the accuracy of NSCLC histological subtyping and clinical staging. Given the reduced reliance on precise radiologist annotation, our proposed model shows promising potential for clinical application.

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通过注意力增强型多任务深度学习增强 NSCLC 亚型和分期:新型诊断工具
研究目的本研究的目的是开发一种新颖的多任务学习方法,利用注意力编码器对非小细胞肺癌(NSCLC)的组织学亚型和临床分期进行分类,与目前流行的深度学习模型相比,该方法具有更优越的性能:数据来自癌症成像档案(TCIA)中的六个公开数据集。根据纳入和排除标准,共分配了来自 758 个病例的 4548 张 CT 切片。我们评估了多个多任务学习模型,这些模型整合了注意力机制,以解决 NSCLC 亚型分类和临床分期方面的难题。这些模型的共享层利用基于卷积的模块进行特征提取,而任务层则专门用于组织学亚型分类和分期。在分类之前,每个分支通过基于卷积的模块和基于注意力的模块依次处理特征:我们的研究评估了 758 例 NSCLC 患者(平均年龄为 66.2 岁 ± 10.3;男性 473 例),其中包括 ADC 和 SCC 病例。在对 NSCLC 的组织学亚型和临床分期进行分类时,基于 MobileNet 的多任务学习模型(MN-MTL-A)在注意力机制的增强下表现出色,每项任务的曲线下面积(AUC)分别达到 0.963(95 % CI:0.943, 0.981)和 0.966(95 % CI:0.945, 0.982)。根据 DeLong 检验,该模型在两项任务中的 P 值均小于或等于 0.01,明显优于缺乏注意力机制的同类模型和为单任务学习配置的同类模型:结论:在我们的多任务学习网络中整合注意力编码器块,能显著提高 NSCLC 组织学亚型和临床分期的准确性。由于减少了对放射科医生精确注释的依赖,我们提出的模型显示出临床应用的巨大潜力。
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来源期刊
International Journal of Medical Informatics
International Journal of Medical Informatics 医学-计算机:信息系统
CiteScore
8.90
自引率
4.10%
发文量
217
审稿时长
42 days
期刊介绍: International Journal of Medical Informatics provides an international medium for dissemination of original results and interpretative reviews concerning the field of medical informatics. The Journal emphasizes the evaluation of systems in healthcare settings. The scope of journal covers: Information systems, including national or international registration systems, hospital information systems, departmental and/or physician''s office systems, document handling systems, electronic medical record systems, standardization, systems integration etc.; Computer-aided medical decision support systems using heuristic, algorithmic and/or statistical methods as exemplified in decision theory, protocol development, artificial intelligence, etc. Educational computer based programs pertaining to medical informatics or medicine in general; Organizational, economic, social, clinical impact, ethical and cost-benefit aspects of IT applications in health care.
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