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评估用于通过颅内血管迂曲度和厚度信息预测年龄的机器学习模型。

Assessing Machine Learning Models for Predicting Age with Intracranial Vessel Tortuosity and Thickness Information.

作者信息

Yoon Hoon-Seok, Oh Jeongmin, Kim Yoon-Chul

机构信息

Division of Digital Healthcare, College of Software and Digital Healthcare Convergence, Yonsei University, Wonju 26493, Republic of Korea.

出版信息

Brain Sci. 2023 Oct 26;13(11):1512. doi: 10.3390/brainsci13111512.

Abstract

This study aimed to develop and validate machine learning (ML) models that predict age using intracranial vessels' tortuosity and diameter features derived from magnetic resonance angiography (MRA) data. A total of 171 subjects' three-dimensional (3D) time-of-flight MRA image data were considered for analysis. After annotations of two endpoints in each arterial segment, tortuosity features such as the sum of the angle metrics, triangular index, relative length, and product of the angle distance, as well as the vessels' diameter features, were extracted and used to train and validate the ML models for age prediction. Features extracted from the right and left internal carotid arteries (ICA) and basilar arteries were considered as the inputs to train and validate six ML regression models with a four-fold cross validation. The random forest regression model resulted in the lowest root mean square error of 14.9 years and the highest average coefficient of determination of 0.186. The linear regression model showed the lowest average mean absolute percentage error (MAPE) and the highest average Pearson correlation coefficient (0.532). The mean diameter of the right ICA vessel segment was the most important feature contributing to prediction of age in two out of the four regression models considered. An ML of tortuosity descriptors and diameter features extracted from MRA data showed a modest correlation between real age and ML-predicted age. Further studies are warranted for the assessment of the model's age predictions in patients with intracranial vessel diseases.

摘要

本研究旨在开发并验证机器学习(ML)模型,该模型利用从磁共振血管造影(MRA)数据中得出的颅内血管迂曲度和直径特征来预测年龄。总共171名受试者的三维(3D)时间飞跃MRA图像数据被纳入分析。在对每个动脉节段的两个端点进行标注后,提取了诸如角度度量总和、三角形指数、相对长度和角度距离乘积等迂曲度特征以及血管直径特征,并用于训练和验证用于年龄预测的ML模型。从左右颈内动脉(ICA)和基底动脉提取的特征被视为输入,用于训练和验证六个采用四折交叉验证的ML回归模型。随机森林回归模型的均方根误差最低,为14.9岁,平均决定系数最高,为0.186。线性回归模型的平均平均绝对百分比误差(MAPE)最低,平均皮尔逊相关系数最高(0.532)。在考虑的四个回归模型中的两个模型中,右侧ICA血管节段的平均直径是对年龄预测贡献最大的特征。从MRA数据中提取的迂曲度描述符和直径特征的ML显示,实际年龄与ML预测年龄之间存在适度相关性。有必要进一步研究评估该模型对颅内血管疾病患者的年龄预测。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/029f/10669197/89412b094d51/brainsci-13-01512-g001.jpg

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