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Diagnostic support for selected neuromuscular diseases using answer-pattern recognition and data mining techniques: a proof of concept multicenter prospective trial

机译:使用答案模式识别和数据挖掘技术为选定的神经肌肉疾病提供诊断支持:概念验证的多中心前瞻性试验

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Background Diagnosis of neuromuscular diseases in primary care is often challenging. Rare diseases such as Pompe disease are easily overlooked by the general practitioner. We therefore aimed to develop a diagnostic support tool using patient-oriented questions and combined data mining algorithms recognizing answer patterns in individuals with selected neuromuscular diseases. A multicenter prospective study for the proof of concept was conducted thereafter. Methods First, 16 interviews with patients were conducted focusing on their pre-diagnostic observations and experiences. From these interviews, we developed a questionnaire with 46 items. Then, patients with diagnosed neuromuscular diseases as well as patients without such a disease answered the questionnaire to establish a database for data mining. For proof of concept, initially only six diagnoses were chosen (myotonic dystrophy and myotonia (MdMy), Pompe disease (MP), amyotrophic lateral sclerosis (ALS), polyneuropathy (PNP), spinal muscular atrophy (SMA), other neuromuscular diseases, and no neuromuscular disease (NND). A prospective study was performed to validate the automated malleable system, which included six different classification methods combined in a fusion algorithm proposing a final diagnosis. Finally, new diagnoses were incorporated into the system. Results In total, questionnaires from 210 individuals were used to train the system. 89.5?% correct diagnoses were achieved during cross-validation. The sensitivity of the system was 93–97?% for individuals with MP, with MdMy and without neuromuscular diseases, but only 69?% in SMA and 81?% in ALS patients. In the prospective trial, 57/64 (89?%) diagnoses were predicted correctly by the computerized system. All questions, or rather all answers, increased the diagnostic accuracy of the system, with the best results reached by the fusion of different classifier methods. Receiver operating curve (ROC) and p -value analyses confirmed the results. Conclusion A questionnaire-based diagnostic support tool using data mining methods exhibited good results in predicting selected neuromuscular diseases. Due to the variety of neuromuscular diseases, additional studies are required to measure beneficial effects in the clinical setting.
机译:背景技术在初级保健中对神经肌肉疾病的诊断通常具有挑战性。全科医生很容易忽视诸如庞贝病的罕见疾病。因此,我们旨在使用面向患者的问题和组合的数据挖掘算法来开发一种诊断支持工具,以识别患有特定神经肌肉疾病的个体的回答模式。此后进行了多中心的概念验证前瞻性研究。方法首先,对16位患者进行访谈,重点是他们的诊断前观察和经验。通过这些访谈,我们开发了包含46个项目的问卷。然后,诊断出神经肌肉疾病的患者以及没有这种疾病的患者回答问卷,以建立用于数据挖掘的数据库。为了进行概念验证,最初仅选择了六个诊断(强直性肌营养不良和肌强直(MdMy),庞贝病(MP),肌萎缩性侧索硬化症(ALS),多发性神经病(PNP),脊髓性肌萎缩症(SMA),其他神经肌肉疾病和进行了一项前瞻性研究,以验证该自动化延展性系统,该系统包括六种不同的分类方法,并结合了融合算法以提出最终诊断;最后,新的诊断被纳入该系统。从210名个体中对该系统进行了训练,在交叉验证过程中正确诊断的比例为89.5%,该系统对患有MP,患有MdMy和无神经肌肉疾病的MP个体的敏感性为93-97%。在SMA患者中占81%,在ALS患者中占81%,在这项前瞻性试验中,计算机系统可以正确预测出57/64(89%)的诊断结果,所有问题,或更确切地说,所有答案都增加了诊断率c系统的准确性,通过融合不同的分类器方法可获得最佳结果。接收器工作曲线(ROC)和p值分析证实了结果。结论使用数据挖掘方法的基于问卷的诊断支持工具在预测某些神经肌肉疾病方面表现出良好的效果。由于神经肌肉疾病的种类繁多,还需要进行其他研究来衡量临床环境中的有益作用。

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