a The Sir Peter MacCallum Department of Oncology , The University of Melbourne , Melbourne , Australia.
b Department of Physical Sciences , Peter MacCallum Cancer Centre , Melbourne , Australia.
Acta Oncol. 2018 Nov;57(11):1540-1546. doi: 10.1080/0284186X.2018.1468084. Epub 2018 Apr 26.
There are currently no methods to estimate cell density in the prostate. This study aimed to develop predictive models to estimate prostate cell density from multiparametric magnetic resonance imaging (mpMRI) data at a voxel level using machine learning techniques.
In vivo mpMRI data were collected from 30 patients before radical prostatectomy. Sequences included T2-weighted imaging, diffusion-weighted imaging and dynamic contrast-enhanced imaging. Ground truth cell density maps were computed from histology and co-registered with mpMRI. Feature extraction and selection were performed on mpMRI data. Final models were fitted using three regression algorithms including multivariate adaptive regression spline (MARS), polynomial regression (PR) and generalised additive model (GAM). Model parameters were optimised using leave-one-out cross-validation on the training data and model performance was evaluated on test data using root mean square error (RMSE) measurements.
Predictive models to estimate voxel-wise prostate cell density were successfully trained and tested using the three algorithms. The best model (GAM) achieved a RMSE of 1.06 (± 0.06) × 10 cells/mm and a relative deviation of 13.3 ± 0.8%.
Prostate cell density can be quantitatively estimated non-invasively from mpMRI data using high-quality co-registered data at a voxel level. These cell density predictions could be used for tissue classification, treatment response evaluation and personalised radiotherapy.
目前尚无评估前列腺细胞密度的方法。本研究旨在开发预测模型,以便使用机器学习技术从多参数磁共振成像(mpMRI)数据在体素水平上预测前列腺细胞密度。
对 30 例接受根治性前列腺切除术的患者进行了体内 mpMRI 数据采集。序列包括 T2 加权成像、扩散加权成像和动态对比增强成像。通过组织学和 mpMRI 配准计算了细胞密度图的真值。对 mpMRI 数据进行了特征提取和选择。最终模型使用三种回归算法(包括多变量自适应回归样条(MARS)、多项式回归(PR)和广义加性模型(GAM))进行拟合。在训练数据上使用留一交叉验证优化模型参数,并使用均方根误差(RMSE)测量在测试数据上评估模型性能。
成功地使用三种算法训练和测试了估计体素水平前列腺细胞密度的预测模型。最佳模型(GAM)的 RMSE 为 1.06(±0.06)×10 个细胞/mm,相对偏差为 13.3±0.8%。
可以使用高质量的配准数据在体素水平上从 mpMRI 数据中定量估计前列腺细胞密度。这些细胞密度预测可用于组织分类、治疗反应评估和个性化放疗。