基于患者轨迹数据的鲁棒多焦点深度神经网络进展预测

K. Arunkumar, S. Vasundra
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引用次数: 0

摘要

目的患者治疗轨迹数据用于预测研究中所进行的特定疾病的治疗结果。为了确定疾病对病人的演变和治疗造成的健康变化,没有考虑到现有的方法。因此,利用深度学习模型对轨迹数据挖掘进行疾病识别预测,具有较高的准确率和较低的计算成本。设计/方法/方法利用多焦点深度神经网络分类器来检测新的疾病类别和合并症类别,从而在体系结构的层上识别患者轨迹数据的基因组模式的变化。分类器通过激活和权函数学习提取的特征集,然后在多个方面进行合并,将未确定的疾病序列分类为一个新的变体。疾病进展学习进度的表现利用了组成分类器的精度,通常比优化后的分类器具有更大的泛化效益。深度学习架构使用了权重函数、输入层上的偏置函数和最大池化。将输入层的结果应用于隐藏层,生成疾病的多焦点特征,并利用ReLu函数沿超参数整定在激活函数中对多焦点特征疾病进行处理,在全连接网络的输出层产生有效的结果。实验结果表明,通过交叉验证,该模型在计算时间和精度方面优于其他方法。独创性/价值提出的进化分类器是一种鲁棒架构,它利用目标函数将数据序列映射到进化疾病类别到患者轨迹的类分布中。然后,该模型的生成输出层产生特定患者轨迹的疾病进展结果。该模型试图利用数据条件概率函数来得到准确的预测结果。该工作的原创性定义与以往方法相比,该方法的值是准确的,并增加了分析预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust multifocus deep neural network for progression prediction on patient trajectory data
PurposePatient treatment trajectory data are used to predict the outcome of the treatment to particular disease that has been carried out in the research. In order to determine the evolving disease on the patient and changes in the health due to treatment has not considered existing methodologies. Hence deep learning models to trajectory data mining can be employed to identify disease prediction with high accuracy and less computation cost.Design/methodology/approachMultifocus deep neural network classifiers has been utilized to detect the novel disease class and comorbidity class to the changes in the genome pattern of the patient trajectory data can be identified on the layers of the architecture. Classifier is employed to learn extracted feature set with activation and weight function and then merged on many aspects to classify the undetermined sequence of diseases as a new variant. The performance of disease progression learning progress utilizes the precision of the constituent classifiers, which usually has larger generalization benefits than those optimized classifiers.FindingsDeep learning architecture uses weight function, bias function on input layers and max pooling. Outcome of the input layer has applied to hidden layer to generate the multifocus characteristics of the disease, and multifocus characterized disease is processed in activation function using ReLu function along hyper parameter tuning which produces the effective outcome in the output layer of a fully connected network. Experimental results have proved using cross validation that proposed model outperforms methodologies in terms of computation time and accuracy.Originality/valueProposed evolving classifier represented as a robust architecture on using objective function to map the data sequence into a class distribution of the evolving disease class to the patient trajectory. Then, the generative output layer of the proposed model produces the progression outcome of the disease of the particular patient trajectory. The model tries to produce the accurate prognosis outcomes by employing data conditional probability function. The originality of the work defines 70% and comparisons of the previous methods the method of values are accurate and increased analysis of the predictions.
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