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首页> 外文期刊>Neural Network World >AFFECTIVE SYMPTOMS AND POSTURAL ABNORMALITIES AS PREDICTORS OF HEADACHE: AN APPLICATION OF ARTIFICIAL NEURAL NETWORKS
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AFFECTIVE SYMPTOMS AND POSTURAL ABNORMALITIES AS PREDICTORS OF HEADACHE: AN APPLICATION OF ARTIFICIAL NEURAL NETWORKS

机译:情感症状和姿势异常作为头痛预测因子:人工神经网络的应用

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摘要

Chronic headache is a major liability in the individuals' quality of life. Identifying in advance the main features common to patients with headache may allow planning a preventive strategy of intervention. An artificial neural network model (Auto Contractive Maps - AutoCM), aimed at analyzing the correlations between patients' characteristics, affective symptoms and posture indicators has been developed in this paper. Patients suffering from chronic headache were observed at a neurological centre in Sicily (Italy). Headache and affective states were measured using the Profile of Mood States (POMS), the Beck Depression Inventory (BDI), the Toronto Alexithymia Scale (TAS-20) and the Repression Scale. Postural evaluations were carried through a stabilometric platform. The method of analysis selected allowed to reconstruct some records that were missing, through a Recirculation AutoAssociative Neural Network, and to obtain sound results. The results showed how some items from TAS-20, Repression and POMS were closely linked. The postural abnormalities were correlated primarily with repression features. The highest scores of the POMS were correlated with the items of the BDI. The results obtained lead to interesting remarks about the common traits to patients with headache. The main conclusion lies in the potentialities offered by the new methodology applied, that may contribute, overall, to a better understanding of the complexity of chronic diseases, where many factors concur to define patients' health conditions.
机译:慢性头痛是个人生活质量的主要责任。提前识别头痛患者共同的主要特征可以允许规划预防性干预策略。本文开发了一种人工神经网络模型(自动收缩图 - AutoCM),旨在分析患者特征,情感症状和姿势指标之间的相关性。在西西里岛(意大利)的神经系统中心观察到患有慢性头痛的患者。使用情绪状态(POMS),Beck抑制库存(BDI),多伦多alexithymia级(Tas-20)和抑制尺度来测量头痛和情感状态。姿势评估通过稳定性平台进行。选择分析方法允许通过再循环自动关联神经网络重建一些缺少的记录,并获得声音结果。结果表明,有些项目来自TAS-20,抑制和POMS是密切相关的。姿势异常主要与镇压特征相关。 POM的最高分与BDI的物品相关。得到的结果导致对头痛患者的常见性状有趣的言论。主要结论在于所应用的新方法提供的潜力,总的来说,可以更好地了解慢性疾病的复杂性,其中许多因素同意定义患者的健康状况。

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  • 来源
    《Neural Network World》 |2020年第1期|1-26|共26页
  • 作者单位

    Dipartimento di Economia Universita degli Studi di Messina Piazza Pugliatti 1 98122 Messina Italy;

    Semeion Centro Ricerche di Scienze della Comu-nicazione Roma Italy;

    CEIS Economic Evaluation Sz HTA Facolta di Economia Univer-sita di Roma 'Tor Vergata' Roma Italy Institute for Leadership and Management in Healthcare Kingston University London United Kingdom;

    Dipartimento di Neuroscienze Policlinico Universitario di Messina Messina Italy;

    Semeion Centro Ricerche di Scienze della Comu-nicazione Roma Italy;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    affective symptoms; postural abnormalities; headache; artificial neural networks; auto contractive maps;

    机译:情感症状;姿势异常;头痛;人工神经网络;自动收缩图;

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