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A Text-Based Data Mining and Toxicity Prediction Modeling System for a Clinical Decision Support in Radiation Oncology: A Preliminary Study

机译:一种基于文本的数据挖掘和毒性预测建模系统,用于放射肿瘤学中的临床决策支持:初步研究

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The aim of this study is an integrated research for text-based data mining and toxicity prediction modeling system for clinical decision support system based on big data in radiation oncology as a preliminary research. The structured and unstructured data were prepared by treatment plans and the unstructured data were extracted by dose-volume data image pattern recognition of prostate cancer for research articles crawling through the internet. We modeled an artificial neural network to build a predictor model system for toxicity prediction of organs at risk. We used a text-based data mining approach to build the artificial neural network model for bladder and rectum complication predictions. The pattern recognition method was used to mine the unstructured toxicity data for dose-volume at the detection accuracy of 97.9%. The confusion matrix and training model of the neural network were achieved with 50 modeled plans (n = 50) for validation. The toxicity level was analyzed and the risk factors for 25% bladder, 50% bladder, 20% rectum, and 50% rectum were calculated by the artificial neural network algorithm. As a result, 32 plans could cause complication but 18 plans were designed as non-complication among 50 modeled plans. We integrated data mining and a toxicity modeling method for toxicity prediction using prostate cancer cases. It is shown that a preprocessing analysis using text-based data mining and prediction modeling can be expanded to personalized patient treatment decision support based on big data.
机译:本研究的目的是基于初步研究的基于临床决策支持系统的基于文本的数据挖掘和毒性预测建模系统的综合研究。通过治疗计划制备结构化和非结构化数据,并通过用于通过互联网爬行的研究文章的前列腺癌的剂量数据图像模式识别提取非结构化数据。我们建模了一种人工神经网络,构建风险的器官毒性预测的预测模型系统。我们使用了基于文本的数据挖掘方法来构建膀胱和直肠复杂性预测的人工神经网络模型。模式识别方法用于将非结构化毒性数据挖掘,用于检测精度为97.9%。用50个建模的计划(n = 50)实现神经网络的混淆矩阵和训练模型进行验证。分析了毒性水平,通过人工神经网络算法计算了25%膀胱,50%膀胱,20%直肠和50%直肠的危险因素。因此,32个计划可能导致复杂化,但是在50个建模计划中设计了18个计划作为不起作用。我们使用前列腺癌病例综合数据挖掘和毒性预测毒性建模方法。结果表明,使用基于文本的数据挖掘和预测建模的预处理分析可以基于大数据扩展到个性化患者治疗决策支持。

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