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Multiclass classification of FDG PET scans for the distinction between Parkinson's disease and atypical parkinsonian syndromes

机译:FDG PET扫描的多类分类,以区分帕金森氏病和非典型帕金森氏综合征

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Most available pattern recognition methods in neuroimaging address binary classification problems. Here, we used relevance vector machine (RVM) in combination with booststrap resampling (‘bagging’) for non-hierarchical multiclass classification. The method was tested on 120 cerebral 18 fluorodeoxyglucose (FDG) positron emission tomography (PET) scans performed in patients who exhibited parkinsonian clinical features for 3.5years on average but that were outside the prevailing perception for Parkinson's disease (PD). A radiological diagnosis of PD was suggested for 30 patients at the time of PET imaging. However, at follow-up several years after PET imaging, 42 of them finally received a clinical diagnosis of PD. The remaining 78 APS patients were diagnosed with multiple system atrophy (MSA, N=31), progressive supranuclear palsy (PSP, N=26) and corticobasal syndrome (CBS, N=21), respectively. With respect to this standard of truth, classification sensitivity, specificity, positive and negative predictive values for PD were 93% 83% 75% and 96%, respectively using binary RVM (PD vs. APS) and 90%, 87%, 79% and 94%, respectively, using multiclass RVM (PD vs. MSA vs. PSP vs. CBS). Multiclass RVM achieved 45%, 55% and 62% classification accuracy for, MSA, PSP and CBS, respectively. Finally, a majority confidence ratio was computed for each scan on the basis of class pairs that were the most frequently assigned by RVM. Altogether, the results suggest that automatic multiclass RVM classification of FDG PET scans achieves adequate performance for the early differentiation between PD and APS on the basis of cerebral FDG uptake patterns when the clinical diagnosis is felt uncertain. This approach cannot be recommended yet as an aid for distinction between the three APS classes under consideration. Highlights ? Multiclass classification is one of the challenges of computer-aided diagnosis. ? This was addressed here using relevance vector machine and bootstrap aggregation. ? Performance was tested on FDG-PET scans from 120 parkinsonian patients. ? Four diagnostic classes under consideration as defined on average 3.5years after PET. ? Confusion matrices, majority confidence ratio and discriminant maps were computed.
机译:神经影像学中最可用的模式识别方法解决了二进制分类问题。在这里,我们将相关向量机(RVM)与booststrap重采样(“ bagging”)结合使用,以进行非分层的多类分类。该方法在表现出帕金森氏临床特征平均3.5年但超出帕金森氏病(PD)普遍认知的患者中进行了120例18脑18氟脱氧葡萄糖(FDG)正电子发射断层扫描(PET)扫描测试。建议在PET成像时对30例患者进行PD的放射学诊断。然而,在PET成像后的几年中,其中42例最终获得了PD的临床诊断。其余78例APS患者分别被诊断为多系统萎缩(MSA,N = 31),进行性核上性麻痹(PSP,N = 26)和皮质基底肌综合征(CBS,N = 21)。关于此真理标准,使用二进制RVM(PD与APS)分别为PD的分类敏感性,特异性,阳性和阴性预测值分别为93%,83%,75%和96%,分别为90%,87%,79%和94%分别使用多类RVM(PD,MSA,PSP和CBS)。对于MSA,PSP和CBS,多类RVM分别达到45%,55%和62%的分类精度。最后,根据RVM最频繁分配的类对,为每次扫描计算多数置信度。总之,结果表明,当临床诊断不确定时,基于脑FDG摄取模式,FDG PET扫描的自动多类RVM分类可以实现PD和APS早期区分的足够性能。尚不建议使用这种方法来帮助区分所考虑的三个APS类。强调 ?多类分类是计算机辅助诊断的挑战之一。 ?这在这里使用相关向量机和引导聚合解决。 ?在来自120名帕金森氏患者的FDG-PET扫描中测试了性能。 ? PET后平均3.5年定义的四个诊断类别正在考虑中。 ?计算混淆矩阵,多数置信度比和判别图。

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