计算机科学
贝叶斯推理
贝叶斯概率
磁共振成像
推论
人工智能
脑瘤
先验概率
胶质瘤
分割
空间分析
模式识别(心理学)
数学
统计
病理
放射科
生物
医学
癌症研究
作者
Baoshan Liang,Jingye Tan,Luke Lozenski,David A. Hormuth,Thomas E. Yankeelov,Umberto Villa,Danial Faghihi
标识
DOI:10.1109/tmi.2023.3267349
摘要
Reliably predicting the future spread of brain tumors using imaging data and on a subject-specific basis requires quantifying uncertainties in data, biophysical models of tumor growth, and spatial heterogeneity of tumor and host tissue. This work introduces a Bayesian framework to calibrate the two-/three-dimensional spatial distribution of the parameters within a tumor growth model to quantitative magnetic resonance imaging (MRI) data and demonstrates its implementation in a pre-clinical model of glioma. The framework leverages an atlas-based brain segmentation of grey and white matter to establish subject-specific priors and tunable spatial dependencies of the model parameters in each region. Using this framework, the tumor-specific parameters are calibrated from quantitative MRI measurements early in the course of tumor development in four rats and used to predict the spatial development of the tumor at later times. The results suggest that the tumor model, calibrated by animal-specific imaging data at one time point, can accurately predict tumor shapes with a Dice coefficient $>$ 0.89. However, the reliability of the predicted volume and shape of tumors strongly relies on the number of earlier imaging time points used for calibrating the model. This study demonstrates, for the first time, the ability to determine the uncertainty in the inferred tissue heterogeneity and the model-predicted tumor shape.
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