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A neural network - based algorithm for predicting stone -free status after ESWL therapy

机译:基于神经网络的基于神经网络的算法,用于预测ESWL治疗后的石头状态

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摘要

ABSTRACT Objective: The prototype artificial neural network (ANN) model was developed using data from patients with renal stone, in order to predict stone-free status and to help in planning treatment with Extracorporeal Shock Wave Lithotripsy (ESWL) for kidney stones. Materials and Methods: Data were collected from the 203 patients including gender, single or multiple nature of the stone, location of the stone, infundibulopelvic angle primary or secondary nature of the stone, status of hydronephrosis, stone size after ESWL, age, size, skin to stone distance, stone density and creatinine, for eleven variables. Regression analysis and the ANN method were applied to predict treatment success using the same series of data. Results: Subsequently, patients were divided into three groups by neural network software, in order to implement the ANN: training group (n=139), validation group (n=32), and the test group (n=32). ANN analysis demonstrated that the prediction accuracy of the stone-free rate was 99.25% in the training group, 85.48% in the validation group, and 88.70% in the test group. Conclusions: Successful results were obtained to predict the stone-free rate, with the help of the ANN model designed by using a series of data collected from real patients in whom ESWL was implemented to help in planning treatment for kidney stones.
机译:摘要目的:使用来自肾石患者的数据开发了原型人工神经网络(ANN)模型,以预测无石油状态,并有助于为肾结石进行体外冲击波碎石术(ESWL)治疗。材料和方法:从203名患者中收集数据,包括性别,单身或多种性质,石头的位置,石头的位置,石头的初级或二级性质,滋润后的状态,石材尺寸,尺寸,尺寸,大小,皮肤到石头距离,石头密度和肌酐,为十一变量。应用回归分析和ANN方法使用相同系列数据预测治疗成功。结果:随后,患者通过神经网络软件分为三组,以实现ANN:训练组(n = 139),验证组(n = 32)和测试组(n = 32)。 ANN分析表明,培训组的无石头速率的预测准确性为99.25%,验证组85.48%,试验组88.70%。结论:获得了成功的成果,以通过使用从ESWL的真实患者收集的ANN模型的ANN型号来预测无石头率,以帮助为肾结石进行规划治疗。

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