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Refining diagnosis of Parkinson's disease with deep learning-based interpretation of dopamine transporter imaging

机译:基于深度学习的多巴胺转运蛋白成像对帕金森氏病的诊断

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Dopaminergic degeneration is a pathologic hallmark of Parkinson's disease (PD), which can be assessed by dopamine transporter imaging such as FP-CIT SPECT. Until now, imaging has been routinely interpreted by human though it can show interobserver variability and result in inconsistent diagnosis. In this study, we developed a deep learning-based FP-CIT SPECT interpretation system to refine the imaging diagnosis of Parkinson's disease. This system trained by SPECT images of PD patients and normal controls shows high classification accuracy comparable with the experts' evaluation referring quantification results. Its high accuracy was validated in an independent cohort composed of patients with PD and nonparkinsonian tremor. In addition, we showed that some patients clinically diagnosed as PD who have scans without evidence of dopaminergic deficit (SWEDD), an atypical subgroup of PD, could be reclassified by our automated system. Our results suggested that the deep learning-based model could accurately interpret FP-CIT SPECT and overcome variability of human evaluation. It could help imaging diagnosis of patients with uncertain Parkinsonism and provide objective patient group classification, particularly for SWEDD, in further clinical studies. Highlights ? Deep learning-based FP-CIT SPECT interpretation model was developed. ? Deep learning-based model could overcome interobserver variability. ? Its accuracy for discriminating PD from normal was comparable to the clinical standard. ? It also showed high accuracy for differentiating PD from nonparkinsonian tremor. ? Clinical follow-up results showed SWEDD could be reclassified to PD by our model.
机译:多巴胺能变性是帕金森氏病(PD)的病理标志,可以通过多巴胺转运蛋白成像(如FP-CIT SPECT)进行评估。到目前为止,影像学已被人类常规地解释,尽管它可以显示观察者之间的差异并导致诊断不一致。在这项研究中,我们开发了基于深度学习的FP-CIT SPECT解释系统,以完善帕金森氏病的影像学诊断。该系统由PD患者和正常对照的SPECT图像训练而成,具有很高的分类准确度,与专家评估其定量结果的评估相当。在由PD和非帕金森氏震颤患者组成的独立队列中验证了其高准确性。此外,我们表明,某些临床诊断为PD的患者,其扫描没有多巴胺能缺乏症(SWEDD)(PD的非典型亚型)的证据,可以通过我们的自动化系统重新分类。我们的结果表明,基于深度学习的模型可以准确地解释FP-CIT SPECT并克服人类评估的可变性。它可以帮助对帕金森病不确定的患者进行影像学诊断,并为进一步的临床研究提供客观的患者组分类,特别是对于SWEDD。强调 ?开发了基于深度学习的FP-CIT SPECT解释模型。 ?基于深度学习的模型可以克服观察者之间的差异。 ?其区分PD与正常值的准确性与临床标准相当。 ?它也显示出区分PD和非帕金森氏震颤的高精度。 ?临床随访结果表明,SWEDD可通过我们的模型重新分类为PD。

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