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Main Authors: Naunheim, Stephan, de Paiva, Luis Lopes, Nadig, Vanessa, Kuhl, Yannick, Gundacker, Stefan, Mueller, Florian, Schulz, Volkmar
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2502.07630
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author Naunheim, Stephan
de Paiva, Luis Lopes
Nadig, Vanessa
Kuhl, Yannick
Gundacker, Stefan
Mueller, Florian
Schulz, Volkmar
author_facet Naunheim, Stephan
de Paiva, Luis Lopes
Nadig, Vanessa
Kuhl, Yannick
Gundacker, Stefan
Mueller, Florian
Schulz, Volkmar
contents PET is a functional imaging method that visualizes metabolic processes. TOF information can be derived from coincident detector signals and incorporated into image reconstruction to enhance the SNR. PET detectors are typically assessed by their CTR, but timing performance is degraded by various factors. Research on timing calibration seeks to mitigate these degradations and restore accurate timing information. While many calibration methods use analytical approaches, machine learning techniques have recently gained attention due to their flexibility. We developed a residual physics-based calibration approach that combines prior domain knowledge with the power of machine learning models. This approach begins with an initial analytical calibration addressing first-order skews. The remaining deviations, regarded as residual effects, are used to train machine learning models to eliminate higher-order skews. The key advantage is that the experimenter guides the learning process through the definition of timing residuals. In earlier studies, we developed models that directly predicted the expected time difference, which offered corrections only implicitly (implicit correction models). In this study, we introduce a new definition for timing residuals, enabling us to train models that directly predict correction values (explicit correction models). The explicit correction approach significantly simplifies data acquisition, improves linearity, and enhances timing performance from $371 \pm 6$ ps to $281 \pm 5$ ps for coincidences from 430 keV to 590 keV. Additionally, the new definition reduces model size, making it suitable for high-throughput applications like PET scanners. Experiments were conducted using two detector stacks composed of $4 \times 4$ LYSO:Ce,Ca crystals ($3.8\times 3.8\times 20$ mm$^{3}$) coupled to $4 \times 4$ Broadcom NUV-MT SiPMs and digitized with the TOFPET2 ASIC.
format Preprint
id arxiv_https___arxiv_org_abs_2502_07630
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Rethinking Timing Residuals: Advancing PET Detectors with Explicit TOF Corrections
Naunheim, Stephan
de Paiva, Luis Lopes
Nadig, Vanessa
Kuhl, Yannick
Gundacker, Stefan
Mueller, Florian
Schulz, Volkmar
Instrumentation and Detectors
Machine Learning
PET is a functional imaging method that visualizes metabolic processes. TOF information can be derived from coincident detector signals and incorporated into image reconstruction to enhance the SNR. PET detectors are typically assessed by their CTR, but timing performance is degraded by various factors. Research on timing calibration seeks to mitigate these degradations and restore accurate timing information. While many calibration methods use analytical approaches, machine learning techniques have recently gained attention due to their flexibility. We developed a residual physics-based calibration approach that combines prior domain knowledge with the power of machine learning models. This approach begins with an initial analytical calibration addressing first-order skews. The remaining deviations, regarded as residual effects, are used to train machine learning models to eliminate higher-order skews. The key advantage is that the experimenter guides the learning process through the definition of timing residuals. In earlier studies, we developed models that directly predicted the expected time difference, which offered corrections only implicitly (implicit correction models). In this study, we introduce a new definition for timing residuals, enabling us to train models that directly predict correction values (explicit correction models). The explicit correction approach significantly simplifies data acquisition, improves linearity, and enhances timing performance from $371 \pm 6$ ps to $281 \pm 5$ ps for coincidences from 430 keV to 590 keV. Additionally, the new definition reduces model size, making it suitable for high-throughput applications like PET scanners. Experiments were conducted using two detector stacks composed of $4 \times 4$ LYSO:Ce,Ca crystals ($3.8\times 3.8\times 20$ mm$^{3}$) coupled to $4 \times 4$ Broadcom NUV-MT SiPMs and digitized with the TOFPET2 ASIC.
title Rethinking Timing Residuals: Advancing PET Detectors with Explicit TOF Corrections
topic Instrumentation and Detectors
Machine Learning
url https://arxiv.org/abs/2502.07630