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Comparison of Different Data Mining Methods to Determine Disease Progression in Dissimilar Groups of Parkinson's Patients

机译:不同数据挖掘方法测定帕金森患者异种群体疾病进展的比较

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Parkinson's disease (PD) is the second after Alzheimer's most popular neurodegenerative disease (ND). Cures for both NDs are currently unavailable. OBJECTIVE: The purpose of our study was to predict the results of different PD patients' treatments in order to find an optimal one. METHODS: We have compared rough sets (RS) and others, in short, machine learning (ML) models to describe and predict disease progression expressed as UPDRS values (Unified Parkinson's Disease Rating Scale) in three groups of Parkinson's patients: 23 BMT (Best Medical Treatment) patients on medication; 24 DBS patients on medication and on DBS therapy (Deep Brain Stimulation) after surgery performed during our study; and 15 POP (Postoperative) patients who had had surgery earlier (before the beginning of our research). Every PD patient had three visits approximately every six months. The first visit for DBS patients was before surgery. On the basis of the following condition attributes: disease duration, saccadic eye movement parameters, and neuropsychological tests: PDQ39 (Parkinson's Disease Questionnaire - disease-specific health-related quality-of-life questionnaire), and Epworth Sleepiness Scale tests we have estimated UPDRS changes (as the decision attribute). RESULTS: By means of RS rules obtained for the first visit of BMT/DBS/POP patients, we have predicted UPDRS values in the following year (two visits) with global accuracy of 70% for both BMT visits; 56% for DBS, and 67%, 79% for POP second and third visits. The accuracy obtained by ML models was generally in the same range, but it was calculated separately for different sessions (MedOFF/MedON). We have used RS rules obtained in BMT patients to predict UPDRS of DBS patients; for the first session DBSW1: global accuracy was 64%, for the second DBSW2: 85% and the third DBSW3: 74% but only for DBS patients during stimulation-ON. ML models gave better accuracy for DBSW1/W2 session S1(MedOFF): 88%, but inferior results for session S3 (MedON): 58% and 54%. Both RS and ML could not predict UPDRS in DBS patients during stimulation-OFF visits because of differences in UPDRS. By using RS rules from BMT or DBS patients we could not predict UPDRS of POP group, but with certain limitations (only for MedON), we derived such predictions for the POP group from results of DBS patients by using ML models (60%). SIGNIFICANCE: Thanks to our RS and ML methods, we were able to predict Parkinson's disease (PD) progression in dissimilar groups of patients with different treatments. It might lead, in the future, to the discovery of universal rules of PD progression and optimise the treatment.
机译:帕金森病(PD)是阿尔茨海默氏症最受欢迎的神经退行性疾病(ND)后的第二种。两种ND的治疗目前都无法使用。目的:我们研究的目的是预测不同PD患者治疗的结果,以找到最佳的PD患者治疗。方法:我们已经比较了粗糙集(RS)等,简而言之,机器学习(ML)模型来描述和预测疾病进展,表达为UPDRS价值(统一帕金森病评级规模),在三组帕金森病人:23 BMT(最好医疗药物治疗患者; 24例DBS患者对药物和DBS治疗(深脑刺激)在我们研究期间进行手术后;和15名POP(术后)患者早些时候服用过手术(在我们的研究开始之前)。每个PD患者大约每六个月都有三次访问。第一次访问DBS患者在手术前。在以下条件属性的基础上:疾病持续时间,扫视眼运动参数和神经心理学测试:PDQ39(帕金森病问卷 - 疾病特异性健康相关的生活质量问卷),以及欧盟嗜睡尺度测试我们估计了updrs更改(作为决策属性)。结果:通过获得BMT / DBS / POP患者第一次访问的RS规则,我们在次年(两次访问)中预测了UPDRS值,全球准确性为BMT访问的70%; DBS 56%,波普第二和第三次访问的67%,79%。 ML模型获得的精度通常在相同的范围内,但它单独计算不同的会话(MEDOFF / MEDON)。我们使用BMT患者获得的RS规则预测DBS患者的updrs;对于第一次会议DBSW1:第二个DBSW2:85%和第三个DBSW3:74%,但仅适用于刺激的DBS患者,全球准确度为64%。 ML模型对DBSW1 / W2会话S1(MEDOFF)的准确度提供了更好的准确度(MEDOFF):88%,但会话S3(铭文)的劣势结果:58%和54%。由于UPDRS的差异,卢比和ML在DBS患者中无法预测DBS患者的updrs。通过使用BMT或DBS患者的RS规则,我们无法预测POP组的UPDR,但具有一定的限制(仅用于铭文),我们通过使用ML模型(60%)来从DBS患者的结果中获得POP组的这种预测。意义:由于我们的RS和ML方法,我们能够预测帕金森病(PD)患者不同治疗患者的疾病进展。将来,它可能会导致发现PD进展的普遍规则,并优化治疗。

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