Litcius/Paper detail

Computer-aided extraction of select MRI markers of cerebral small vessel disease: A systematic review

Jiyang Jiang, Dadong Wang, Yang Song, Perminder S. Sachdev, Wei Wen

2022NeuroImage13 citationsDOIOpen Access PDF

Abstract

Cerebral small vessel disease (CSVD) is a major vascular contributor to cognitive impairment in ageing, including dementias. Imaging remains the most promising method for in vivo studies of CSVD. To replace the subjective and laborious visual rating approaches, emerging studies have applied state-of-the-art artificial intelligence to extract imaging biomarkers of CSVD from MRI scans. We aimed to summarise published computer-aided methods for the examination of three imaging biomarkers of CSVD, namely cerebral microbleeds (CMB), dilated perivascular spaces (PVS), and lacunes of presumed vascular origin. Seventy classical image processing, classical machine learning, and deep learning studies were identified. Transfer learning and weak supervision techniques have been applied to accommodate the limitations in the training data. While good performance metrics were achieved in local datasets, there have not been generalisable pipelines validated in different research and/or clinical cohorts. Future studies could consider pooling data from multiple sources to increase data size and diversity, and evaluating performance using both image processing metrics and associations with clinical measures.

Topics & Concepts

Artificial intelligenceComputer scienceNeuroimagingCognitive impairmentMagnetic resonance imagingDeep learningTransfer of learningMachine learningModalitiesDiseaseMedicinePathologyRadiologyNeurosciencePsychologySocial scienceSociologyIntracerebral and Subarachnoid Hemorrhage ResearchAcute Ischemic Stroke ManagementCerebrospinal fluid and hydrocephalus
Computer-aided extraction of select MRI markers of cerebral small vessel disease: A systematic review | Litcius