Literature DB >> 34423071

Lung nodule malignancy classification with weakly supervised explanation generation.

Aniket Joshi1, Jayanthi Sivaswamy1, Gopal Datt Joshi2.   

Abstract

Purpose: Explainable AI aims to build systems that not only give high performance but also are able to provide insights that drive the decision making. However, deriving this explanation is often dependent on fully annotated (class label and local annotation) data, which are not readily available in the medical domain. Approach: This paper addresses the above-mentioned aspects and presents an innovative approach to classifying a lung nodule in a CT volume as malignant or benign, and generating a morphologically meaningful explanation for the decision in the form of attributes such as nodule margin, sphericity, and spiculation. A deep learning architecture that is trained using a multi-phase training regime is proposed. The nodule class label (benign/malignant) is learned with full supervision and is guided by semantic attributes that are learned in a weakly supervised manner.
Results: Results of an extensive evaluation of the proposed system on the LIDC-IDRI dataset show good performance compared with state-of-the-art, fully supervised methods. The proposed model is able to label nodules (after full supervision) with an accuracy of 89.1% and an area under curve of 0.91 and to provide eight attributes scores as an explanation, which is learned from a much smaller training set. The proposed system's potential to be integrated with a sub-optimal nodule detection system was also tested, and our system handled 95% of false positive or random regions in the input well by labeling them as benign, which underscores its robustness. Conclusions: The proposed approach offers a way to address computer-aided diagnosis system design under the constraint of sparse availability of fully annotated images.
© 2021 Society of Photo-Optical Instrumentation Engineers (SPIE).

Entities:  

Keywords:  CAD; explanability; lung nodule; malignancy

Year:  2021        PMID: 34423071      PMCID: PMC8370883          DOI: 10.1117/1.JMI.8.4.044502

Source DB:  PubMed          Journal:  J Med Imaging (Bellingham)        ISSN: 2329-4302


  11 in total

Review 1.  Update in the evaluation of the solitary pulmonary nodule.

Authors:  Mylene T Truong; Jane P Ko; Santiago E Rossi; Ignacio Rossi; Chitra Viswanathan; John F Bruzzi; Edith M Marom; Jeremy J Erasmus
Journal:  Radiographics       Date:  2014-10       Impact factor: 5.333

2.  Multi-Task Deep Model With Margin Ranking Loss for Lung Nodule Analysis.

Authors:  Lihao Liu; Qi Dou; Hao Chen; Jing Qin; Pheng-Ann Heng
Journal:  IEEE Trans Med Imaging       Date:  2019-08-12       Impact factor: 10.048

3.  Automatic Scoring of Multiple Semantic Attributes With Multi-Task Feature Leverage: A Study on Pulmonary Nodules in CT Images.

Authors: 
Journal:  IEEE Trans Med Imaging       Date:  2016-11-16       Impact factor: 10.048

4.  Knowledge-based Collaborative Deep Learning for Benign-Malignant Lung Nodule Classification on Chest CT.

Authors:  Yutong Xie; Yong Xia; Jianpeng Zhang; Yang Song; Dagan Feng; Michael Fulham; Weidong Cai
Journal:  IEEE Trans Med Imaging       Date:  2018-10-17       Impact factor: 10.048

Review 5.  Management of incidental lung nodules <8 mm in diameter.

Authors:  Marcelo Sánchez; Mariana Benegas; Ivan Vollmer
Journal:  J Thorac Dis       Date:  2018-08       Impact factor: 2.895

6.  Agile convolutional neural network for pulmonary nodule classification using CT images.

Authors:  Xinzhuo Zhao; Liyao Liu; Shouliang Qi; Yueyang Teng; Jianhua Li; Wei Qian
Journal:  Int J Comput Assist Radiol Surg       Date:  2018-02-23       Impact factor: 2.924

7.  The Lung Image Database Consortium (LIDC) and Image Database Resource Initiative (IDRI): a completed reference database of lung nodules on CT scans.

Authors:  Samuel G Armato; Geoffrey McLennan; Luc Bidaut; Michael F McNitt-Gray; Charles R Meyer; Anthony P Reeves; Binsheng Zhao; Denise R Aberle; Claudia I Henschke; Eric A Hoffman; Ella A Kazerooni; Heber MacMahon; Edwin J R Van Beeke; David Yankelevitz; Alberto M Biancardi; Peyton H Bland; Matthew S Brown; Roger M Engelmann; Gary E Laderach; Daniel Max; Richard C Pais; David P Y Qing; Rachael Y Roberts; Amanda R Smith; Adam Starkey; Poonam Batrah; Philip Caligiuri; Ali Farooqi; Gregory W Gladish; C Matilda Jude; Reginald F Munden; Iva Petkovska; Leslie E Quint; Lawrence H Schwartz; Baskaran Sundaram; Lori E Dodd; Charles Fenimore; David Gur; Nicholas Petrick; John Freymann; Justin Kirby; Brian Hughes; Alessi Vande Casteele; Sangeeta Gupte; Maha Sallamm; Michael D Heath; Michael H Kuhn; Ekta Dharaiya; Richard Burns; David S Fryd; Marcos Salganicoff; Vikram Anand; Uri Shreter; Stephen Vastagh; Barbara Y Croft
Journal:  Med Phys       Date:  2011-02       Impact factor: 4.071

8.  Pulmonary Nodule Classification with Deep Convolutional Neural Networks on Computed Tomography Images.

Authors:  Wei Li; Peng Cao; Dazhe Zhao; Junbo Wang
Journal:  Comput Math Methods Med       Date:  2016-12-14       Impact factor: 2.238

Review 9.  Evaluation of the solitary pulmonary nodule: size matters, but do not ignore the power of morphology.

Authors:  Annemie Snoeckx; Pieter Reyntiens; Damien Desbuquoit; Maarten J Spinhoven; Paul E Van Schil; Jan P van Meerbeeck; Paul M Parizel
Journal:  Insights Imaging       Date:  2017-11-15

10.  Classification of lung nodules in CT scans using three-dimensional deep convolutional neural networks with a checkpoint ensemble method.

Authors:  Hwejin Jung; Bumsoo Kim; Inyeop Lee; Junhyun Lee; Jaewoo Kang
Journal:  BMC Med Imaging       Date:  2018-12-03       Impact factor: 1.930

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