Literature DB >> 34040274

Internal-transfer Weighting of Multi-task Learning for Lung Cancer Detection.

Yiyuan Yang1, Riqiang Gao1, Yucheng Tang2, Sanja L Antic3, Steve Deppen3, Yuankai Huo1, Kim L Sandler3, Pierre P Massion3, Bennett A Landman1,2.   

Abstract

Deep learning has achieved many successes in medical imaging, including lung nodule segmentation and lung cancer prediction on computed tomography (CT). Recently, multi-task networks have shown to both offer additional estimation capabilities, and, perhaps more importantly, increased performance over single-task networks on a "main/primary" task. However, balancing the optimization criteria of multi-task networks across different tasks is an area of active exploration. Here, we extend a previously proposed 3D attention-based network with four additional multi-task subnetworks for the detection of lung cancer and four auxiliary tasks (diagnosis of asthma, chronic bronchitis, chronic obstructive pulmonary disease, and emphysema). We introduce and evaluate a learning policy, Periodic Focusing Learning Policy (PFLP), that alternates the dominance of tasks throughout the training. To improve performance on the primary task, we propose an Internal-Transfer Weighting (ITW) strategy to suppress the loss functions on auxiliary tasks for the final stages of training. To evaluate this approach, we examined 3386 patients (single scan per patient) from the National Lung Screening Trial (NLST) and de-identified data from the Vanderbilt Lung Screening Program, with a 2517/277/592 (scans) split for training, validation, and testing. Baseline networks include a single-task strategy and a multi-task strategy without adaptive weights (PFLP/ITW), while primary experiments are multi-task trials with either PFLP or ITW or both. On the test set for lung cancer prediction, the baseline single-task network achieved prediction AUC of 0.8080 and multi-task baseline failed to converge (AUC 0.6720). However, applying PFLP helped multi-task network clarify and achieved test set lung cancer prediction AUC of 0.8402. Furthermore, our ITW technique boosted the PFLP enabled multi-task network and achieved an AUC of 0.8462 (McNemar test, p < 0.01). In conclusion, adaptive consideration of multi-task learning weights is important, and PFLP and ITW are promising strategies.

Entities:  

Keywords:  Computed Tomography; Deep Learning; Lung Cancer; Multi-Task

Year:  2020        PMID: 34040274      PMCID: PMC8148030          DOI: 10.1117/12.2548755

Source DB:  PubMed          Journal:  Proc SPIE Int Soc Opt Eng        ISSN: 0277-786X


  5 in total

1.  The National Lung Screening Trial: overview and study design.

Authors:  Denise R Aberle; Christine D Berg; William C Black; Timothy R Church; Richard M Fagerstrom; Barbara Galen; Ilana F Gareen; Constantine Gatsonis; Jonathan Goldin; John K Gohagan; Bruce Hillman; Carl Jaffe; Barnett S Kramer; David Lynch; Pamela M Marcus; Mitchell Schnall; Daniel C Sullivan; Dorothy Sullivan; Carl J Zylak
Journal:  Radiology       Date:  2010-11-02       Impact factor: 11.105

2.  Lung Cancer Detection using Co-learning from Chest CT Images and Clinical Demographics.

Authors:  Jiachen Wang; Riqiang Gao; Yuankai Huo; Shunxing Bao; Yunxi Xiong; Sanja L Antic; Travis J Osterman; Pierre P Massion; Bennett A Landman
Journal:  Proc SPIE Int Soc Opt Eng       Date:  2019-03

3.  Evaluate the Malignancy of Pulmonary Nodules Using the 3-D Deep Leaky Noisy-OR Network.

Authors:  Fangzhou Liao; Ming Liang; Zhe Li; Xiaolin Hu; Sen Song
Journal:  IEEE Trans Neural Netw Learn Syst       Date:  2019-02-14       Impact factor: 10.451

4.  Semi-Supervised Multi-Task Learning for Lung Cancer Diagnosis.

Authors:  Naji Khosravan; Ulas Bagci
Journal:  Annu Int Conf IEEE Eng Med Biol Soc       Date:  2018-07

5.  End-to-end lung cancer screening with three-dimensional deep learning on low-dose chest computed tomography.

Authors:  Diego Ardila; Atilla P Kiraly; Sujeeth Bharadwaj; Bokyung Choi; Joshua J Reicher; Lily Peng; Daniel Tse; Mozziyar Etemadi; Wenxing Ye; Greg Corrado; David P Naidich; Shravya Shetty
Journal:  Nat Med       Date:  2019-05-20       Impact factor: 53.440

  5 in total

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