Literature DB >> 33767226

Automated detection of critical findings in multi-parametric brain MRI using a system of 3D neural networks.

Kambiz Nael1,2, Eli Gibson3, Chen Yang4, Pascal Ceccaldi3, Youngjin Yoo3, Jyotipriya Das3, Amish Doshi4, Bogdan Georgescu3, Nirmal Janardhanan3, Benjamin Odry5, Mariappan Nadar3, Michael Bush6, Thomas J Re3, Stefan Huwer7, Sonal Josan8, Heinrich von Busch8, Heiko Meyer7, David Mendelson4, Burton P Drayer4, Dorin Comaniciu3, Zahi A Fayad4.   

Abstract

With the rapid growth and increasing use of brain MRI, there is an interest in automated image classification to aid human interpretation and improve workflow. We aimed to train a deep convolutional neural network and assess its performance in identifying abnormal brain MRIs and critical intracranial findings including acute infarction, acute hemorrhage and mass effect. A total of 13,215 clinical brain MRI studies were categorized to training (74%), validation (9%), internal testing (8%) and external testing (8%) datasets. Up to eight contrasts were included from each brain MRI and each image volume was reformatted to common resolution to accommodate for differences between scanners. Following reviewing the radiology reports, three neuroradiologists assigned each study to abnormal vs normal, and identified three critical findings including acute infarction, acute hemorrhage, and mass effect. A deep convolutional neural network was constructed by a combination of localization feature extraction (LFE) modules and global classifiers to identify the presence of 4 variables in brain MRIs including abnormal, acute infarction, acute hemorrhage and mass effect. Training, validation and testing sets were randomly defined on a patient basis. Training was performed on 9845 studies using balanced sampling to address class imbalance. Receiver operating characteristic (ROC) analysis was performed. The ROC analysis of our models for 1050 studies within our internal test data showed AUC/sensitivity/specificity of 0.91/83%/86% for normal versus abnormal brain MRI, 0.95/92%/88% for acute infarction, 0.90/89%/81% for acute hemorrhage, and 0.93/93%/85% for mass effect. For 1072 studies within our external test data, it showed AUC/sensitivity/specificity of 0.88/80%/80% for normal versus abnormal brain MRI, 0.97/90%/97% for acute infarction, 0.83/72%/88% for acute hemorrhage, and 0.87/79%/81% for mass effect. Our proposed deep convolutional network can accurately identify abnormal and critical intracranial findings on individual brain MRIs, while addressing the fact that some MR contrasts might not be available in individual studies.

Entities:  

Year:  2021        PMID: 33767226     DOI: 10.1038/s41598-021-86022-7

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  4 in total

1.  External Validation of Deep Learning Algorithms for Radiologic Diagnosis: A Systematic Review.

Authors:  Alice C Yu; Bahram Mohajer; John Eng
Journal:  Radiol Artif Intell       Date:  2022-05-04

2.  Synthetic MRI for stroke: a qualitative and quantitative pilot study.

Authors:  Joachim André; Sami Barrit; Patrice Jissendi
Journal:  Sci Rep       Date:  2022-07-07       Impact factor: 4.996

Review 3.  Computational Approaches for Acute Traumatic Brain Injury Image Recognition.

Authors:  Emily Lin; Esther L Yuh
Journal:  Front Neurol       Date:  2022-03-09       Impact factor: 4.003

Review 4.  Automated Identification of Multiple Findings on Brain MRI for Improving Scan Acquisition and Interpretation Workflows: A Systematic Review.

Authors:  Kaining Sheng; Cecilie Mørck Offersen; Jon Middleton; Jonathan Frederik Carlsen; Thomas Clement Truelsen; Akshay Pai; Jacob Johansen; Michael Bachmann Nielsen
Journal:  Diagnostics (Basel)       Date:  2022-08-03
  4 in total

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