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首页> 外文期刊>Nuclear Medicine Communications >Artificial intelligence in the diagnosis of Parkinson's disease from ioflupane-123 single-photon emission computed tomography dopamine transporter scans using transfer learning
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Artificial intelligence in the diagnosis of Parkinson's disease from ioflupane-123 single-photon emission computed tomography dopamine transporter scans using transfer learning

机译:从ioflupane-123单光子发射的诊断帕金森病的诊断中的人工智能计算断层摄影多巴胺转运仪扫描使用转移学习

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摘要

ObjectiveThe objective of this study was to identify the extent to which artificial intelligence could be used in the diagnosis of Parkinson's disease from ioflupane-123 (I-123) single-photon emission computed tomography (SPECT) dopamine transporter scans using transfer learning.Materials and methodsA data set of 54 normal and 54 abnormal I-123 SPECT scans was amplified 44-fold using a process of image augmentation. This resulted in a training set of 2376 normal and 2376 abnormal images. This was used to retrain the top layer of the Inception v3 network. The resulting neural network functioned as a classifier for new I-123 SPECT scans as either normal or abnormal. A completely separate set of 45 I-123 SPECT scans were used for final testing of the network.ResultsThe area under the receiver-operator curve in final testing was 0.87. This corresponded to a test sensitivity of 96.3%, a specificity of 66.7%, a positive predictive value of 81.3% and a negative predictive value of 92.3%, using an optimum diagnostic threshold.ConclusionThis study has provided proof of concept for the use of transfer learning, from convolutional neural networks pretrained on nonmedical images, for the interpretation of I-123 SPECT scans. This has been shown to be possible in this study even with a very small sample size. This technique is likely to be applicable to many areas of diagnostic imaging.
机译:本研究的目标是确定人工智能可用于从Ioflupane-123(I-123)单光子发射计算断层摄影(SPECT)多巴胺转运蛋白转移扫描的人工智能在帕金森病的诊断方面用于使用转移学习。方法使用图像增强的过程放大44倍的54正常和54个异常I-123 SPECT扫描的数据集。这导致了2376个正常和2376个异常图像的训练集。这用于重新培训成立V3网络的顶层。由此产生的神经网络用作新I-123 SPECT扫描的分类器,扫描正常或异常。完全独立的45 I-123 SPECT扫描用于网络的最终测试。最终测试中的接收器操作员曲线下的遗传区域为0.87。这相当于测试敏感性为96.3%,特异性为66.7%,阳性预测值81.3%,负面预测值为92.3%,使用最佳的诊断阈值。结论本研究提供了使用转移的概念证明从非医疗图像上掠过的卷积神经网络来说,学习,用于解释I-123 SPECT扫描。在这项研究中,这也是可能的,即使具有非常小的样本大小。这种技术可能适用于许多诊断成像领域。

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