利用深度学习对抑郁症患者的哈脑膜进行分割和体积估算

IF 4 Q2 NEUROSCIENCES
Yusuke Kyuragi , Naoya Oishi , Momoko Hatakoshi , Jinichi Hirano , Takamasa Noda , Yujiro Yoshihara , Yuri Ito , Hiroyuki Igarashi , Jun Miyata , Kento Takahashi , Kei Kamiya , Junya Matsumoto , Tomohisa Okada , Yasutaka Fushimi , Kazuyuki Nakagome , Masaru Mimura , Toshiya Murai , Taro Suwa
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引用次数: 0

摘要

背景哈维纳小脑与抑郁症的病理生理学有关。然而,其细小的结构限制了分割方法的准确性,有关其体积的研究结果也不一致。本研究旨在利用深度学习创建一个高度准确的脑膜分割模型,测试其在临床磁共振成像中的通用性,并检查健康参与者与抑郁症患者之间的差异:N = 234,女性占 47.0%;健康参与者 N = 148,女性占 37.0%:N = 148,女性占 37.8%)。研究人员使用三维残余 U-Net 在 3T 磁共振图像上创建了脑膜分割模型。预测模型的可重复性和可推广性在不同的验证组群中进行了测试。随后,研究了健康参试者和抑郁症患者的脑叶体积之间的差异。测试-重测数据集显示平均绝对百分比误差为 6.66,表明重现性足够高。在磁场强度、空间分辨率和成像序列等不同成像条件下,通过调整阈值,数据集的 Dice 系数达到了 80%。在普通人群中,观察到与年龄有明显的负相关,这种相关性在抑郁症患者中更为明显(p < 10-7, r = -0.59)。即使排除年龄和扫描仪的影响(p = .019,η2 = 0.099),女性的脑桥体积也会随着抑郁症严重程度的增加而减小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmentation and Volume Estimation of the Habenula Using Deep Learning in Patients With Depression

Background

The habenula is involved in the pathophysiology of depression. However, its small structure limits the accuracy of segmentation methods, and the findings regarding its volume have been inconsistent. This study aimed to create a highly accurate habenula segmentation model using deep learning, test its generalizability to clinical magnetic resonance imaging, and examine differences between healthy participants and patients with depression.

Methods

This multicenter study included 382 participants (patients with depression: N = 234, women 47.0%; healthy participants: N = 148, women 37.8%). A 3-dimensional residual U-Net was used to create a habenula segmentation model on 3T magnetic resonance images. The reproducibility and generalizability of the predictive model were tested on various validation cohorts. Thereafter, differences between the habenula volume of healthy participants and that of patients with depression were examined.

Results

A Dice coefficient of 86.6% was achieved in the derivation cohort. The test-retest dataset showed a mean absolute percentage error of 6.66, indicating sufficiently high reproducibility. A Dice coefficient of >80% was achieved for datasets with different imaging conditions, such as magnetic field strengths, spatial resolutions, and imaging sequences, by adjusting the threshold. A significant negative correlation with age was observed in the general population, and this correlation was more pronounced in patients with depression (p < 10−7, r = −0.59). Habenula volume decreased with depression severity in women even when the effects of age and scanner were excluded (p = .019, η2 = 0.099).

Conclusions

Habenula volume could be a pathophysiologically relevant factor and diagnostic and therapeutic marker for depression, particularly in women.

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来源期刊
Biological psychiatry global open science
Biological psychiatry global open science Psychiatry and Mental Health
CiteScore
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