iScience (Aug 2023)

Improved interpretation of 18F-florzolotau PET in progressive supranuclear palsy using a normalization-free deep-learning classifier

  • Jiaying Lu,
  • Christoph Clement,
  • Jimin Hong,
  • Min Wang,
  • Xinyi Li,
  • Lara Cavinato,
  • Tzu-Chen Yen,
  • Fangyang Jiao,
  • Ping Wu,
  • Jianjun Wu,
  • Jingjie Ge,
  • Yimin Sun,
  • Matthias Brendel,
  • Leonor Lopes,
  • Axel Rominger,
  • Jian Wang,
  • Fengtao Liu,
  • Chuantao Zuo,
  • Yihui Guan,
  • Qianhua Zhao,
  • Kuangyu Shi

Journal volume & issue
Vol. 26, no. 8
p. 107426

Abstract

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Summary: While 18F-florzolotau tau PET is an emerging biomarker for progressive supranuclear palsy (PSP), its interpretation has been hindered by a lack of consensus on visual reading and potential biases in conventional semi-quantitative analysis. As clinical manifestations and regions of elevated 18F-florzolotau binding are highly overlapping in PSP and the Parkinsonian type of multiple system atrophy (MSA-P), developing a reliable discriminative classifier for 18F-florzolotau PET is urgently needed. Herein, we developed a normalization-free deep-learning (NFDL) model for 18F-florzolotau PET, which achieved significantly higher accuracy for both PSP and MSA-P compared to semi-quantitative classifiers. Regions driving the NFDL classifier’s decision were consistent with disease-specific topographies. NFDL-guided radiomic features correlated with clinical severity of PSP. This suggests that the NFDL model has the potential for early and accurate differentiation of atypical parkinsonism and that it can be applied in various scenarios due to not requiring subjective interpretation, MR-dependent, and reference-based preprocessing.

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