Machine learning in small sample neuroimaging studies: Novel measures for schizophrenia analysis
Metadatos
Mostrar el registro completo del ítemAutor
Jiménez Mesa, Carmen; Ramírez Pérez De Inestrosa, Javier; Yi, Zhenghui; Yan, Chao; Chan, Raymond; Murray, Graham K.; Gorriz Sáez, Juan Manuel; Suckling, JohnEditorial
John Wiley & Sons
Materia
Cross-validation Deep learning Explanaible AI
Fecha
2024-03-27Referencia bibliográfica
Jimenez-Mesa, C., Ramirez, J., Yi, Z., Yan, C., Chan, R., Murray, G. K., Gorriz, J. M., & Suckling, J. (2024). Machine learning in small sample neuroimaging studies: Novel measures for schizophrenia analysis. Human Brain Mapping, 45(5), e26555. https://doi.org/10.1002/hbm.26555
Patrocinador
CIN/AEI/10.13039/501100011033 and by FSE+ (PID2022-137451OBI00, PID2022-137629OA-I00); Ministerio de Universidades (FPU18/04902); Medical Research Council (MR/W020025/1); NIHR Cambridge Biomedical Research Centre (NIHR203312)Resumen
Novel features derived from imaging and artificial intelligence systems are commonly
coupled to construct computer-aided diagnosis (CAD) systems that are intended as
clinical support tools or for investigation of complex biological patterns. This study
used sulcal patterns from structural images of the brain as the basis for classifying
patients with schizophrenia from unaffected controls. Statistical, machine learning
and deep learning techniques were sequentially applied as a demonstration of how a
CAD system might be comprehensively evaluated in the absence of prior empirical
work or extant literature to guide development, and the availability of only small sample
datasets. Sulcal features of the entire cerebral cortex were derived from
58 schizophrenia patients and 56 healthy controls. No similar CAD systems has been
reported that uses sulcal features from the entire cortex. We considered all the
stages in a CAD system workflow: preprocessing, feature selection and extraction,
and classification. The explainable AI techniques Local Interpretable Model-agnostic
Explanations and SHapley Additive exPlanations were applied to detect the relevance
of features to classification. At each stage, alternatives were compared in terms of
their performance in the context of a small sample. Differentiating sulcal patterns
were located in temporal and precentral areas, as well as the collateral fissure. We
also verified the benefits of applying dimensionality reduction techniques and validation
methods, such as resubstitution with upper bound correction, to optimize
performance.