儿童脑CT图像分割方法的有效年龄预测模型

Ren Morita, Saya Ando, Daisuke Fujita, Shoichiro Ishikawa, Koji Onoue, K. Ando, R. Ishikura, Syoji Kobashi
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引用次数: 0

摘要

脑成像用于诊断儿童脑部疾病。然而,没有定量的方法来估计发育不良或早期生长等发育状况,定性诊断是基于熟练医生的经验。因此,我们正在开发一种计算机辅助诊断系统,从儿童脑CT图像中估计脑年龄。该系统从CT图像中分割颅骨区域并校准其姿态和位置。该系统还使用3D卷积神经网络(3D CNN)从CT图像中提取特征,并使用全连接层预测大脑年龄。本文重点研究了颅骨区域分割方法,这是该系统中必不可少的分析处理方法。我们研究了两种不同的区域分割方法,并对204名0 ~ 3岁(47个月)的受试者进行了对比实验,结果表明,我们可以将3D CNN模型的预测准确率提高32%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pediatric Brain CT Image Segmentation Methods for Effective Age Prediction Models
Brain imaging is used to diagnose pediatric brain diseases. However, there is no quantitative method to estimate developmental conditions such as underdevelopment or early growth, and qualitative diagnosis is based on the experience of skilled physicians. Therefore, we are developing a computer-aided diagnosis system to estimate brain age from pediatric brain CT images. This system segmented cranial regions from CT images and calibrated their posture and position. The system also extracts features from CT images using a 3D convolutional neural network (3D CNN) and predicts brain age using a fully connected layer. This paper focuses on the cranial region segmentation method, which is an essential analysis processing method for the system. We investigated two different methods of region segmentation, and a comparison experiment with 204 subjects aged 0 to 3 years (47 months) showed that we could improve 32% of the prediction accuracy of the 3D CNN model.
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