Literature DB >> 34040275

Extracting 2D weak labels from volume labels using multiple instance learning in CT hemorrhage detection.

Samuel W Remedios1,2,3,4, Zihao Wu4, Camilo Bermudez5, Cailey I Kerley4, Snehashis Roy1, Mayur B Patel6, John A Butman2, Bennett A Landman4,5,7, Dzung L Pham1,2.   

Abstract

Multiple instance learning (MIL) is a supervised learning methodology that aims to allow models to learn instance class labels from bag class labels, where a bag is defined to contain multiple instances. MIL is gaining traction for learning from weak labels but has not been widely applied to 3D medical imaging. MIL is well-suited to clinical CT acquisitions since (1) the highly anisotropic voxels hinder application of traditional 3D networks and (2) patch-based networks have limited ability to learn whole volume labels. In this work, we apply MIL with a deep convolutional neural network to identify whether clinical CT head image volumes possess one or more large hemorrhages (> 20cm3), resulting in a learned 2D model without the need for 2D slice annotations. Individual image volumes are considered separate bags, and the slices in each volume are instances. Such a framework sets the stage for incorporating information obtained in clinical reports to help train a 2D segmentation approach. Within this context, we evaluate the data requirements to enable generalization of MIL by varying the amount of training data. Our results show that a training size of at least 400 patient image volumes was needed to achieve accurate per-slice hemorrhage detection. Over a five-fold cross-validation, the leading model, which made use of the maximum number of training volumes, had an average true positive rate of 98.10%, an average true negative rate of 99.36%, and an average precision of 0.9698. The models have been made available along with source code1 to enabled continued exploration and adaption of MIL in CT neuroimaging.

Entities:  

Keywords:  classification; computed tomography (CT); deep learning; hematoma; lesion; multiple instance learning; neural network

Year:  2020        PMID: 34040275      PMCID: PMC8148053          DOI: 10.1117/12.2549356

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


  10 in total

1.  Automatic classification of pulmonary peri-fissural nodules in computed tomography using an ensemble of 2D views and a convolutional neural network out-of-the-box.

Authors:  Francesco Ciompi; Bartjan de Hoop; Sarah J van Riel; Kaman Chung; Ernst Th Scholten; Matthijs Oudkerk; Pim A de Jong; Mathias Prokop; Bram van Ginneken
Journal:  Med Image Anal       Date:  2015-09-08       Impact factor: 8.545

2.  Multiple instance learning for computer aided detection and diagnosis of gastric cancer with dual-energy CT imaging.

Authors:  Chao Li; Cen Shi; Huan Zhang; Yazhu Chen; Su Zhang
Journal:  J Biomed Inform       Date:  2015-08-28       Impact factor: 6.317

3.  Multiple-instance learning algorithms for computer-aided detection.

Authors:  M Murat Dundar; Glenn Fung; Balaji Krishnapuram; R Bharat Rao
Journal:  IEEE Trans Biomed Eng       Date:  2008-03       Impact factor: 4.538

4.  Constrained Deep Weak Supervision for Histopathology Image Segmentation.

Authors:  Zhipeng Jia; Xingyi Huang; Eric I-Chao Chang; Yan Xu
Journal:  IEEE Trans Med Imaging       Date:  2017-07-07       Impact factor: 10.048

5.  Machine learning approaches in medical image analysis: From detection to diagnosis.

Authors:  Marleen de Bruijne
Journal:  Med Image Anal       Date:  2016-06-23       Impact factor: 8.545

6.  The first step for neuroimaging data analysis: DICOM to NIfTI conversion.

Authors:  Xiangrui Li; Paul S Morgan; John Ashburner; Jolinda Smith; Christopher Rorden
Journal:  J Neurosci Methods       Date:  2016-03-02       Impact factor: 2.390

7.  Multi-Instance Deep Learning: Discover Discriminative Local Anatomies for Bodypart Recognition.

Authors:  Yoshihisa Shinagawa; Dimitris N Metaxas
Journal:  IEEE Trans Med Imaging       Date:  2016-02-03       Impact factor: 10.048

8.  Distributed deep learning for robust multi-site segmentation of CT imaging after traumatic brain injury.

Authors:  Samuel Remedios; Snehashis Roy; Justin Blaber; Camilo Bermudez; Vishwesh Nath; Mayur B Patel; John A Butman; Bennett A Landman; Dzung L Pham
Journal:  Proc SPIE Int Soc Opt Eng       Date:  2019-03

9.  Validated automatic brain extraction of head CT images.

Authors:  John Muschelli; Natalie L Ullman; W Andrew Mould; Paul Vespa; Daniel F Hanley; Ciprian M Crainiceanu
Journal:  Neuroimage       Date:  2015-04-07       Impact factor: 6.556

10.  H-DenseUNet: Hybrid Densely Connected UNet for Liver and Tumor Segmentation From CT Volumes.

Authors:  Xiaomeng Li; Hao Chen; Xiaojuan Qi; Qi Dou; Chi-Wing Fu; Pheng-Ann Heng
Journal:  IEEE Trans Med Imaging       Date:  2018-06-11       Impact factor: 10.048

  10 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.