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Use of a neural network to predict stone growth after shock wave lithotripsy.

机译:使用神经网络预测冲击波碎石后结石的生长。

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OBJECTIVES: To determine whether a neural network is superior to standard computational methods in predicting stone regrowth after shock wave lithotripsy (SWL) and to determine whether the presence of residual fragments, as an independent variable, increases risk. METHODS: We reviewed the records of 98 patients with renal or ureteral calculi treated by primary SWL at a single institution and followed up for at least 1 year; residual stone fragment growth or new stone occurrence was determined from abdominal radiographs. A neural network was programmed and trained to predict an increased stone volume over time utilizing input variables, including previous stone events, metabolic abnormality, directed medical therapy, infection, caliectasis, and residual fragments after SWL. Patient data were partitioned into a training set of 65 examples and a test set of 33. The neural network did not encounter the test set until training was complete. RESULTS: The average follow-up period was 3.5 years (range 1 to 10). Of 98 patients, 47 had residual stone fragments 3 months after SWL; of these 47, 8 had increased stone volume at last follow-up visit. Of 51 patients stone free after SWL, 4 had stone recurrence. Coexisting risk factors were incorporated into a neural computational model to determine which of the risk factors was individually predictive of stone growth. The classification accuracy of the neural model in the test set was 91%, with a sensitivity of 91%, a specificity of 92%, and a receiver operating characteristic curve area of 0.964, results significantly better than those yielded by linear and quadratic discriminant function analysis. CONCLUSIONS: A computational tool was developed to predict accurately the risk of future stone activity in patients treated by SWL. Use of the neural network demonstrates that none of the risk factors for stone growth, including the presence of residual fragments, is individually predictive of continuing stone formation.
机译:目的:确定神经网络在预测冲击波碎石术(SWL)后的结石再生方面是否优于标准计算方法,并确定是否存在作为独立变量的残余碎片会增加风险。方法:我们回顾了单机构接受原发性SWL治疗的98例肾或输尿管结石患者的记录,并随访了至少1年。从腹部X线照片确定残留的结石碎片生长或新结石的出现。对神经网络进行了编程和培训,以利用输入变量来预测随时间推移的结石体积增加,这些变量包括先前的结石事件,代谢异常,定向药物治疗,感染,结直肠扩张和SWL后残留的碎片。将患者数据分为65个示例的训练集和33个测试集。在训练完成之前,神经网络未遇到该测试集。结果:平均随访时间为3.5年(范围1至10)。在98名患者中,有47名在SWL后3个月残留了结石碎片。在这47个患者中,有8个在上次随访时增加了结石量。 SWL后无结石的51例患者中,有4例结石复发。将共存的危险因素整合到神经计算模型中,以确定哪些危险因素可以单独预测结石的生长。测试集中神经模型的分类精度为91%,灵敏度为91%,特异性为92%,接收器操作特征曲线面积为0.964,其结果明显优于线性和二次判别函数分析。结论:开发了一种计算工具,可准确预测SWL治疗的患者未来结石活动的风险。使用神经网络表明,结石生长的任何危险因素(包括残留碎片的存在)都不能单独预测结石的持续形成。

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