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首页> 外文期刊>Artificial intelligence in medicine >An optimized experimental protocol based on neuro-evolutionary algorithms Application to the classification of dyspeptic patients and to the prediction of the effectiveness of their treatment
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An optimized experimental protocol based on neuro-evolutionary algorithms Application to the classification of dyspeptic patients and to the prediction of the effectiveness of their treatment

机译:基于神经进化算法的优化实验方案,用于消化不良患者的分类及其治疗效果的预测

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摘要

Objective: This paper aims to present a specific optimized experimental protocol (EP) for classification and/or prediction problems. The neuro-evolutionary algorithms on which it is based and its application with two selected real cases are described in detail. The first application addresses the problem of classifying the functional (FD) or organic (OD) forms of dyspepsia; the second relates to the problem of predicting the 6-month follow-up outcome of dyspeptic patients treated by helicobacter pylori (HP) eradication therapy. Methods and material: The database built by the multicentre observational study, performed in Italy by the NUD-look Study Group, provided the material studied: a collection of data from 861 patients with previously uninvestigated dyspepsia, being referred for upper gastrointestinal endoscopy to 42 Italian Endoscopic Services. The proposed EP makes use of techniques based on advanced neuro-evolutionary systems (NESs) and is structured in phases and steps. The use of specific input selection (IS) and training and testing (T&T) techniques together with genetic doping (GenD) algorithm is described in detail, as well as the steps taken in the two benchmark and optimization protocol phases. Results: In terms of accuracy results, a value of 79.64% was achieved during optimization, with mean benchmark values of 64.90% for the linear discriminant analysis (LDA) and 68.15% for the multi layer perceptron (MLP), for the classification task. A value of 88.61% was achieved during optimization for the prediction task, with mean benchmark values of 49.32% for the LDA and 70.05% for the MLP. Conclusions: The proposed EP has led to the construction of inductors that are viable and usable on medical data which is representative but highly not linear. In particular, for the classification problem, these new inductors may be effectively used on the basal examination data to support doctors in deciding whether to avoid endoscopic examinations; whereas, in the prediction problem, they may support doctors' decisions about the advisability of eradication therapy. In both cases the variables selected indicate the possibility of reducing the data collection effort and also of providing information that can be used for general investigations on symptom relevance.
机译:目的:本文旨在针对分类和/或预测问题提出一种特定的优化实验协议(EP)。详细介绍了该算法所基于的神经进化算法及其在两个实际案例中的应用。第一个应用解决了消化不良的功能性(FD)或器质性(OD)形式分类的问题。第二个问题涉及预测通过幽门螺杆菌(HP)根除疗法治疗的消化不良患者的6个月随访结果的问题。方法和材料:由NUD-look研究小组在意大利进行的多中心观察性研究建立的数据库,提供了研究的材料:861例先前未经调查的消化不良患者的数据收集,被上消化道内镜检查转诊给42例意大利人内窥镜服务。拟议的EP利用了基于高级神经进化系统(NESs)的技术,并按阶段和步骤进行了构造。详细介绍了特定输入选择(IS)和训练与测试(T&T)技术以及遗传掺杂(GenD)算法的使用,以及在两个基准测试阶段和优化协议阶段中采取的步骤。结果:就准确性结果而言,在分类过程中,优化过程中获得了79.64%的值,线性判别分析(LDA)的平均基准值为64.90%,多层感知器(MLP)的平均基准值为68.15%。在优化预测任务的过程中,获得了88.61%的值,LDA和MLP的平均基准值为49.32%。结论:拟议的EP导致了电感器的构造,该电感器在具有代表性但高度非线性的医学数据上可行且可用。特别是对于分类问题,这些新的感应器可有效地用于基础检查数据,以支持医生决定是否避免内镜检查。而在预测问题上,他们可能会支持医生就根除疗法的可取性做出的决定。在这两种情况下,选择的变量都表明有可能减少数据收集工作,并提供可用于症状相关性一般研究的信息。

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