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A deep learning anthropomorphic model observer for a detection task in PET.

Muhan Shao1, Darrin W Byrd2, Jhimli Mitra1

  • 1GE HealthCare Technology and Innovation Center, Niskayuna, New York, USA.

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|July 15, 2024
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Summary
This summary is machine-generated.

Deep learning model observers (DLMOs) show improved prediction of human observers in positron emission tomography (PET) lesion detection tasks. Combining CNN and Swin Transformer encoders further enhances DLMO performance over conventional methods like CHO.

Keywords:
channelized Hotelling observer (CHO)convolutional neural network (CNN)deep learningdetectionmodel observerpositron emission tomography (PET)transformertwo‐alternative forced‐choice (2AFC)

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Area of Science:

  • Medical Imaging
  • Artificial Intelligence

Background:

  • Lesion detection in Positron Emission Tomography (PET) is crucial for oncology.
  • Anthropomorphic model observers (MOs) assess task-based image quality by mimicking human observers (HOs).
  • Deep learning MOs (DLMOs), particularly CNNs, are emerging for various imaging modalities, but their use in PET is less explored.

Purpose of the Study:

  • To evaluate if DLMOs can better predict human observer performance than conventional MOs in PET lesion detection.
  • To assess DLMOs in a two-alternative forced-choice (2AFC) detection task using PET images with realistic anatomical variations.

Main Methods:

  • Two DLMOs were developed: a CNN-based DLMO and a CNN-SwinT DLMO integrating CNN and Swin Transformer encoders.
  • PET images with and without simulated lesions were used, with labels provided by eight human observers (radiologists and image scientists).
  • Performance was compared against Channelized Hotelling Observer (CHO) and Non-Prewhitening Matched Filter (NPWMF) using metrics like prediction accuracy and Mean Squared Error (MSE) in a 9-fold cross-validation.

Main Results:

  • Both CNN DLMO and CNN-SwinT DLMO outperformed CHO and NPWMF in accuracy and MSE.
  • The CNN-SwinT DLMO demonstrated the highest prediction performance among all evaluated model observers.

Conclusions:

  • DLMOs offer superior prediction of human observer performance in PET lesion detection compared to traditional MOs like CHO.
  • Integrating Swin Transformer with CNN encoders significantly improves DLMO prediction accuracy over CNN-only approaches.