Litcius/Paper detail

Interpreting Brain Biomarkers: Challenges and solutions in interpreting machine learning-based predictive neuroimaging

Rongtao Jiang, Choong‐Wan Woo, Shile Qi, Jing Wu, Jing Sui (Beijing Normal University), my correct affiliation is beijing normal university, not Qingdao University of Science and Technology, please correct the current affiliation. Thank you

2022IEEE Signal Processing Magazine35 citationsDOIOpen Access PDF

Abstract

Predictive modeling of neuroimaging data (predictive neuroimaging) for evaluating individual differences in various behavioral phenotypes and clinical outcomes is of growing interest. However, the field is experiencing challenges regarding the interpretability of the results. Approaches to defining the specific contribution of functional connections, regions, or networks in prediction models are urgently needed, which may help explore the underlying mechanisms. In this article, we systematically review the methods and applications for interpreting brain signatures derived from predictive neuroimaging based on a survey of 326 research articles. Strengths, limitations, and the suitable conditions for major interpretation strategies are also deliberated. In-depth discussion of common issues in existing literature and the corresponding recommendations to address these pitfalls are provided. We highly recommend exhaustive validation on the reliability and interpretability of the biomarkers across multiple datasets and contexts, which thereby could translate technical advances in neuroimaging into concrete improvements in precision medicine.

Topics & Concepts

InterpretabilityNeuroimagingComputer scienceData scienceMachine learningArtificial intelligenceReliability (semiconductor)Predictive modellingField (mathematics)PsychologyNeuroscienceMathematicsQuantum mechanicsPhysicsPure mathematicsPower (physics)Functional Brain Connectivity StudiesHealth, Environment, Cognitive AgingMental Health Research Topics