4.5 Article

Automated analysis of low-field brain MRI in cerebral malaria

期刊

BIOMETRICS
卷 79, 期 3, 页码 2417-2429

出版社

WILEY
DOI: 10.1111/biom.13708

关键词

brain segmentation; data integration; Markov random field; MRI

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A central challenge in medical imaging studies is to extract biomarkers that can characterize disease pathology or outcomes. This paper presents a fully automated framework for translating radiological diagnostic criteria into image-based biomarkers, with excellent classification performance.
A central challenge of medical imaging studies is to extract biomarkers that characterize disease pathology or outcomes. Modern automated approaches have found tremendous success in high-resolution, high-quality magnetic resonance images. These methods, however, may not translate to low-resolution images acquired on magnetic resonance imaging (MRI) scanners with lower magnetic field strength. In low-resource settings where low-field scanners are more common and there is a shortage of radiologists to manually interpret MRI scans, it is critical to develop automated methods that can augment or replace manual interpretation, while accommodating reduced image quality. We present a fully automated framework for translating radiological diagnostic criteria into image-based biomarkers, inspired by a project in which children with cerebral malaria (CM) were imaged using low-field 0.35 Tesla MRI. We integrate multiatlas label fusion, which leverages high-resolution images from another sample as prior spatial information, with parametric Gaussian hidden Markov models based on image intensities, to create a robust method for determining ventricular cerebrospinal fluid volume. We also propose normalized image intensity and texture measurements to determine the loss of gray-to-white matter tissue differentiation and sulcal effacement. These integrated biomarkers have excellent classification performance for determining severe brain swelling due to CM.

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