肺癌
系列(地层学)
人工智能
深度学习
计算机科学
肺癌筛查
时间序列
癌症
医学
病理
机器学习
内科学
生物
古生物学
作者
Shahab Aslani,Pavan Alluri,Eyjólfur Gudmundsson,E. Chandy,J.F. McCabe,Anand Devaraj,Carolyn Horst,Sam M. Janes,Rahul Chakkara,Daniel C. Alexander,Arjun Nair,Joseph Jacob
标识
DOI:10.1016/j.compmedimag.2024.102399
摘要
Lung cancer screening (LCS) using annual computed tomography (CT) scanning significantly reduces mortality by detecting cancerous lung nodules at an earlier stage. Deep learning algorithms can improve nodule malignancy risk stratification. However, they have typically been used to analyse single time point CT data when detecting malignant nodules on either baseline or incident CT LCS rounds. Deep learning algorithms have the greatest value in two aspects. These approaches have great potential in assessing nodule change across time-series CT scans where subtle changes may be challenging to identify using the human eye alone. Moreover, they could be targeted to detect nodules developing on incident screening rounds, where cancers are generally smaller and more challenging to detect confidently. Here, we show the performance of our Deep learning-based Computer-Aided Diagnosis model integrating Nodule and Lung imaging data with clinical Metadata Longitudinally (DeepCAD-NLM-L) for malignancy prediction. DeepCAD-NLM-L showed improved performance (AUC = 88%) against models utilizing single time-point data alone. DeepCAD-NLM-L also demonstrated comparable and complementary performance to radiologists when interpreting the most challenging nodules typically found in LCS programs. It also demonstrated similar performance to radiologists when assessed on out-of-distribution imaging dataset. The results emphasize the advantages of using time-series and multimodal analyses when interpreting malignancy risk in LCS.
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