Montage based 3D Medical Image Retrieval from Traumatic Brain Injury Cohort using Deep Convolutional Neural Network.

Cailey I Kerley, Yuankai Huo, Shikha Chaganti, Shunxing Bao, Mayur B Patel, Bennett A Landman
Author Information
  1. Cailey I Kerley: Department of Electrical Engineering, Vanderbilt University, Nashville, TN, USA.
  2. Yuankai Huo: Department of Electrical Engineering, Vanderbilt University, Nashville, TN, USA.
  3. Shikha Chaganti: Department of Computer Science, Vanderbilt University, Nashville, TN, USA.
  4. Shunxing Bao: Department of Computer Science, Vanderbilt University, Nashville, TN, USA.
  5. Mayur B Patel: Departments of Surgery, Neurosurgery, Hearing & Speech Sciences; Center for Health Services Research, Vanderbilt Brain Institute; Critical Illness, Brain Dysfunction, and Survivorship Center, Vanderbilt University Medical Center; VA Tennessee Valley Healthcare System, Department of Veterans Affairs Medical Center, Nashville, TN, USA.
  6. Bennett A Landman: Department of Electrical Engineering, Vanderbilt University, Nashville, TN, USA.

Abstract

Brain imaging analysis on clinically acquired computed tomography (CT) is essential for the diagnosis, risk prediction of progression, and treatment of the structural phenotypes of traumatic brain injury (TBI). However, in real clinical imaging scenarios, entire body CT images (e.g., neck, abdomen, chest, pelvis) are typically captured along with whole brain CT scans. For instance, in a typical sample of clinical TBI imaging cohort, only ~15% of CT scans actually contain whole brain CT images suitable for volumetric brain analyses; the remaining are partial brain or non-brain images. Therefore, a manual image retrieval process is typically required to isolate the whole brain CT scans from the entire cohort. However, the manual image retrieval is time and resource consuming and even more difficult for the larger cohorts. To alleviate the manual efforts, in this paper we propose an automated 3D medical image retrieval pipeline, called deep montage-based image retrieval (dMIR), which performs classification on 2D montage images via a deep convolutional neural network. The novelty of the proposed method for image processing is to characterize the medical image retrieval task based on the montage images. In a cohort of 2000 clinically acquired TBI scans, 794 scans were used as training data, 206 scans were used as validation data, and the remaining 1000 scans were used as testing data. The proposed achieved accuracy=1.0, recall=1.0, precision=1.0, f1=1.0 for validation data, while achieved accuracy=0.988, recall=0.962, precision=0.962, f1=0.962 for testing data. Thus, the proposed dMIR is able to perform accurate CT whole brain image retrieval from large-scale clinical cohorts.

Keywords

References

  1. Healthc Inform Res. 2012 Mar;18(1):3-9 [PMID: 22509468]
  2. Proc SPIE Int Soc Opt Eng. 2015 Mar 20;9413:null [PMID: 25914504]
  3. Proc SPIE Int Soc Opt Eng. 2018 Mar;10597:null [PMID: 29887668]
  4. Proc SPIE Int Soc Opt Eng. 2016 Feb 27;9784:null [PMID: 27127331]
  5. Mil Med. 2016 May;181(5 Suppl):11-22 [PMID: 27168548]
  6. J Digit Imaging. 2018 Jun;31(3):304-314 [PMID: 29725960]

Grants

  1. R01 GM120484/NIGMS NIH HHS
  2. R03 EB012461/NIBIB NIH HHS
  3. UL1 RR024975/NCRR NIH HHS
  4. UL1 TR000445/NCATS NIH HHS

Word Cloud

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