Automatic rating of incomplete hippocampal inversions evaluated across multiple cohorts
Lisa Hemforth, Baptiste Couvy-Duchesne, Kevin De Matos, Camille, Brianceau, Matthieu Joulot, Tobias Banaschewski, Arun L.W. Bokde, Sylvane, Desrivi\`eres, Herta Flor, Antoine Grigis, Hugh Garavan, Penny Gowland,, Andreas Heinz, R\"udiger Br\"uhl, Jean-Luc Martinot

TL;DR
This study introduces an automatic, interpretable deep learning-based method for rating incomplete hippocampal inversion (IHI) from MRI images, demonstrating improved generalization across multiple large cohorts.
Contribution
First automatic IHI rating method using deep learning, with extensive evaluation across diverse cohorts and comparison to traditional regression models.
Findings
Deep learning models outperform ridge regression in IHI rating.
Training on multiple cohorts improves model generalization.
Conv5-FC3 network balances performance and computational efficiency.
Abstract
Incomplete Hippocampal Inversion (IHI), sometimes called hippocampal malrotation, is an atypical anatomical pattern of the hippocampus found in about 20% of the general population. IHI can be visually assessed on coronal slices of T1 weighted MR images, using a composite score that combines four anatomical criteria. IHI has been associated with several brain disorders (epilepsy, schizophrenia). However, these studies were based on small samples. Furthermore, the factors (genetic or environmental) that contribute to the genesis of IHI are largely unknown. Large-scale studies are thus needed to further understand IHI and their potential relationships to neurological and psychiatric disorders. However, visual evaluation is long and tedious, justifying the need for an automatic method. In this paper, we propose, for the first time, to automatically rate IHI. We proceed by predicting four…
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Taxonomy
MethodsAverage Pooling · Kaiming Initialization · Convolution · Global Average Pooling · Max Pooling
