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Ischemic stroke clinical outcome prediction based on image signature selection from multimodality data

机译:基于多模态数据图像签名选择的缺血性卒中临床预后预测

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Quantitative models are essential in precision medicine that can be used to predict health status and prevent disease and disability. Current radiomics models for clinical outcome prediction often depend on huge amount of image features and may include redundant information and ignore individual feature importance. In this work, we propose a prognostic discrimination ranking strategy to select the most relevant image features for image assisted clinical outcome prediction. Firstly, a redundancy and prognostic discrimination evaluation method is proposed to evaluate and rank a large number of features extracted from images. Secondly, forward sequential feature selection is performed to select the top ranked relevant features in each discriminate quantization. Finally, representative vectors are generated by the fusion of pivotal clinical parameters and selected image signatures to be fed into a classification model. The proposed model was trained and tested over 70 patient studies with six MR sequences and four clinical parameters from ISLES challenges. The evaluations using ROC curves demonstrated the improved performance over five other feature selection models where the proposed model achieved AUCs of 0.821, 0.968, 0.983, 0.896 and 1 when predicting five clinical outcome scores respectively.
机译:定量模型在精密医学中至关重要,可用于预测健康状况并预防疾病和残疾。当前用于临床结果预测的放射组学模型通常取决于大量的图像特征,并且可能包括多余的信息,而忽略了各个特征的重要性。在这项工作中,我们提出了一种预后判断分级策略,以选择最相关的图像特征进行图像辅助的临床结果预测。首先,提出了一种冗余和预后判断评价方法,对从图像中提取的大量特征进行评价和排序。其次,执行前向顺序特征选择以在每个区分量化中选择排名最高的相关特征。最后,通过将关键临床参数和选定的图像签名融合来生成代表性向量,以将其输入到分类模型中。提出的模型经过了70项患者研究的培训和测试,这些研究具有6种MR序列和4种来自ISLES挑战的临床参数。使用ROC曲线进行的评估表明,与其他五个特征选择模型相比,该模型的性能有所提高,在五个特征选择模型中,当分别预测五个临床结果得分时,所提出的模型的AUC值为0.821、0.968、0.983、0.896和1。

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