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Differentiation between Parkinson disease and other forms of Parkinsonism using support vector machine analysis of susceptibility-weighted imaging (SWI): Initial results

机译:使用敏感性加权成像(SWI)的支持向量机分析区分帕金森氏病和其他形式的帕金森氏症:初步结果

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Objectives: To diagnose Parkinson disease (PD) at the individual level using pattern recognition of brain susceptibility-weighted imaging (SWI). Methods: We analysed brain SWI in 36 consecutive patients with Parkinsonism suggestive of PD who had (1) SWI at 3T, (2) brain 123I-ioflupane SPECT and (3) extensive neurological testing including follow-up (16 PD, 67.4 ± 6.2years, 11 female; 20 OTHER, a heterogeneous group of atypical Parkinsonism syndromes 65.2 ± 12.5years, 6 female). Analysis included group-level comparison of SWI values and individual-level support vector machine (SVM) analysis. Results: At the group level, simple visual analysis yielded no differences between groups. However, the group-level analyses demonstrated increased SWI in the bilateral thalamus and left substantia nigra in PD patients versus other Parkinsonism. The inverse comparison yielded no supra-threshold clusters. At the individual level, SVM correctly classified PD patients with an accuracy above 86%. Conclusions: SVM pattern recognition of SWI data provides accurate discrimination of PD among patients with various forms of Parkinsonism at an individual level, despite the absence of visually detectable alterations. This pilot study warrants further confirmation in a larger cohort of PD patients and with different MR machines and MR parameters. Key Points: ? Magnetic resonance imaging data offers new insights into Parkinson's disease ? Visual susceptibility-weighted imaging (SWI) analysis could not discriminate idiopathic from atypical PD ? However, support vector machine (SVM) analysis provided highly accurate detection of idiopathic PD ? SVM analysis may contribute to the clinical diagnosis of individual PD patients ? Such information can be readily obtained from routine MR data
机译:目的:使用脑磁敏感加权成像(SWI)的模式识别来诊断帕金森病(PD)。方法:我们分析了连续36例提示帕金森病的PD患者的脑SWI,这些患者具有(1)3T SWI,(2)脑123I-ioflupane SPECT和(3)广泛的神经系统检查,包括随访(16 PD,67.4±6.2年,女性11岁;其他20位,异质性帕金森综合症候群(65.2±12.5岁,女性6位)。分析包括SWI值的组级别比较和个人级别的支持向量机(SVM)分析。结果:在组一级,简单的视觉分析在组之间没有差异。但是,小组水平的分析表明,与其他帕金森病相比,PD患者的双侧丘脑SWI增加和左黑质黑质增加。反向比较未产生超阈值簇。在个人层面上,SVM对PD患者进行了正确分类,准确率超过86%。结论:SWI数据的SVM模式识别可在个体水平上对各种形式的帕金森病患者进行PD的准确区分,尽管没有视觉上可检测到的改变。这项前瞻性研究值得在更多的PD患者群体中使用不同的MR机和MR参数进一步证实。关键点: ?磁共振成像数据为帕金森氏病提供了新的见解?视觉敏感度加权成像(SWI)分析无法将特发性病与非典型性PD区别开来?但是,支持向量机(SVM)分析提供了对特发性PD的高精度检测。 SVM分析可能有助于PD患者的临床诊断?这样的信息可以很容易地从常规MR数据中获得

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