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Automated Interpretation of FP-CIT-SPECT images based on Artificial Intelligence

M. Meier, J. Hammes, A. Drzezga, T. Dratsch, C. Kobe, D. Dos Santos, T. van Eimeren (Cologne, Germany)

Meeting: 2019 International Congress

Abstract Number: 1932

Keywords: Single-photon emission computed tomography(SPECT), Synucleinopathies

Session Information

Date: Wednesday, September 25, 2019

Session Title: Neuroimaging

Session Time: 1:15pm-2:45pm

Location: Les Muses Terrace, Level 3

Objective: Our objective is to develop an AI-based approach to automatically rate FIP-CIT-SPECT data.

Background: FP-CIT-SPECT visualizes the integrity of nigro-striatal dopaminergic synapses in vivo. Although it is currently the gold-standard imaging method for the diagnosis of Parkinsonism, it is susceptible to inter-rater variability and quantitative threshold-values are not well established. Automated image processing by artificial intelligence (AI) holds the potential to drastically simplify and standardize FP-CIT-SPECT reading.

Method: 460 FP-CIT-SPECT datasets that had been acquired on a Picker Prism 3000 and reconstructed with an OSEM algorithm were retrospectively selected and expert ratings regarding presence of pathology were obtained and classified in three categories (healthy, pathologic, undetermined). Cranio-caudal maximum intensity projections (MIPs) were calculated to provide two-dimensional input images. A Google-Tensorflow® AI-environment was set up and the openly available pretrained “Inception-Net” for automated image classification was retrained with the FP-CIT MIPs after removal of the last training layer. Classification performance was cross-validated by a leave-n-out approach.

Results: Initial classification performance for automated detection of pathological scans was in a range from 65-75%. The application of other pre-trained image classification networks, classification of MIPs derived from spatially normalized data and alternative tree-classifier-driven approaches are currently being explored.

Conclusion: Although the classification performance of anatomically unprocessed data needs further improvement, we provide a proof of principle, that AI-based image processing in FP-CIT SPECT is possible. Improved image preprocessing and alternative approaches will likely have a significant impact on the classifications performance so that AI-based automated image rating of FP-CIT-SPECT might be supportive in a future clinical setting.

To cite this abstract in AMA style:

M. Meier, J. Hammes, A. Drzezga, T. Dratsch, C. Kobe, D. Dos Santos, T. van Eimeren. Automated Interpretation of FP-CIT-SPECT images based on Artificial Intelligence [abstract]. Mov Disord. 2019; 34 (suppl 2). https://www.mdsabstracts.org/abstract/automated-interpretation-of-fp-cit-spect-images-based-on-artificial-intelligence/. Accessed June 14, 2025.
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