Automatic rating of incomplete hippocampal inversions evaluated across multiple cohorts.

ArXiv Pub Date : 2024-08-05
Lisa Hemforth, Baptiste Couvy-Duchesne, Kevin De Matos, Camille Brianceau, Matthieu Joulot, Tobias Banaschewski, Arun L W Bokde, Sylvane Desrivières, Herta Flor, Antoine Grigis, Hugh Garavan, Penny Gowland, Andreas Heinz, Rüdiger Brühl, Jean-Luc Martinot, Marie-Laure Paillère Martinot, Eric Artiges, Dimitri Papadopoulos, Herve Lemaitre, Tomas Paus, Luise Poustka, Sarah Hohman, Nathalie Holz, Juliane H Fröhner, Michael N Smolka, Nilakshi Vaidya, Henrik Walter, Robert Whelan, Gunter Schumann, Christian Büchel, J B Poline, Bernd Itterman, Vincent Frouin, Alexandre Martin, Claire Cury, Olivier Colliot
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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 anatomical criteria, which are then summed up to form the IHI score, providing the advantage of an interpretable score. We provided an extensive experimental investigation of different machine learning methods and training strategies. We performed automatic rating using a variety of deep learning models ("conv5-FC3", ResNet and "SECNN") as well as a ridge regression. We studied the generalization of our models using different cohorts and performed multi-cohort learning. We relied on a large population of 2,008 participants from the IMAGEN study, 993 and 403 participants from the QTIM and QTAB studies as well as 985 subjects from the UKBiobank. We showed that deep learning models outperformed a ridge regression. We demonstrated that the performances of the "conv5-FC3" network were at least as good as more complex networks while maintaining a low complexity and computation time. We showed that training on a single cohort may lack in variability while training on several cohorts improves generalization (acceptable performances on all tested cohorts including some that are not included in training). The trained models will be made publicly available should the manuscript be accepted.

在多个队列中评估不完全海马倒置的自动评级。
不完全海马内翻(Incomplete Hippocampal Inversion,IHI),有时也称为海马旋转不良(hippocampal malrotation),是海马的一种非典型解剖形态,在普通人群中约有 20%。IHI 可以通过 T1 加权磁共振图像的冠状切片进行直观评估,使用的是结合四项解剖学标准的综合评分。IHI 与多种脑部疾病(癫痫、精神分裂症)有关。然而,这些研究都是基于小样本。此外,导致 IHI 成因的因素(遗传或环境)在很大程度上也是未知的。因此,需要进行大规模研究,以进一步了解 IHI 及其与神经和精神疾病的潜在关系。然而,视觉评估既漫长又繁琐,因此需要一种自动方法。在本文中,我们首次提出了自动评估 IHI 的方法。我们通过预测四个解剖学标准,然后将其相加形成 IHI 分数,从而提供了一个可解释的分数。我们对不同的机器学习方法和训练策略进行了广泛的实验研究。我们使用各种深度学习模型(conv5-FC3、ResNet 和 SECNN)以及脊回归进行了自动评级。我们使用不同的队列研究了模型的泛化,并进行了多队列学习。我们依靠的是来自 IMAGEN 研究的 2,008 名参与者、来自 QTIM/QTAB 研究的 993 名和 403 名参与者以及来自 UKBiobank 的 985 名受试者组成的庞大群体。我们发现,深度学习模型的表现优于脊回归。我们证明了 conv5-FC3 网络的性能至少不逊于更复杂的网络,同时保持了较低的复杂度和计算时间。我们表明,在单个队列上进行训练可能会缺乏可变性,而在多个队列上进行训练则能提高泛化能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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