Identification for the cortical 3-Hinges folding pattern based on cortical morphological and structural features

Front Neurosci. 2023 Mar 9:17:1125666. doi: 10.3389/fnins.2023.1125666. eCollection 2023.

Abstract

The Cortical 3-Hinges Folding Pattern (i.e., 3-Hinges) is one of the brain's hallmarks, and it is of great reference for predicting human intelligence, diagnosing eurological diseases and understanding the brain functional structure differences among gender. Given the significant morphological variability among individuals, it is challenging to identify 3-Hinges, but current 3-Hinges researches are mainly based on the computationally expensive Gyral-net method. To address this challenge, this paper aims to develop a deep network model to realize the fast identification of 3-Hinges based on cortical morphological and structural features. The main work includes: (1) The morphological and structural features of the cerebral cortex are extracted to relieve the imbalance between the number of 3-Hinges and each brain image's voxels; (2) The feature vector is constructed with the K nearest neighbor algorithm from the extracted scattered features of the morphological and structural features to alleviate over-fitting in training; (3) The squeeze excitation module combined with the deep U-shaped network structure is used to learn the correlation of the channels among the feature vectors; (4) The functional structure roles that 3-Hinges plays between adolescent males and females are discussed in this work. The experimental results on both adolescent and adult MRI datasets show that the proposed model achieves better performance in terms of time consumption. Moreover, this paper reveals that cortical sulcus information plays a critical role in the procedure of identification, and the cortical thickness, cortical surface area, and volume characteristics can supplement valuable information for 3-Hinges identification to some extent. Furthermore, there are significant structural differences on 3-Hinges among adolescent gender.

Keywords: SE-Unet; cortical 3-Hinges folding pattern; cortical morphology and structure; deep learning; gender differences.

Grants and funding

This work was supported in part by the Research Foundation of Education Department of Hunan Province of China (19A496, 21A0109, and 21B0172), the Natural Science Foundation of Hunan Province of China (2022JJ30571 and 2022JJ30552), Open Project of Key Laboratory of Medical Imaging and Artificial Intelligence of Hunan Province, Xiangnan University (YXZN2022003), and the National Natural Science Foundation of China (CN) (62272404 and 61972333).