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Concept development of an on-chip PET system

Organs-on-Chips (OOCs), microdevices mimicking in vivo organs, find growing applications in disease modeling and drug discovery. With the increasing number of uses comes a strong demand for imaging capabilities of OOCs as monitoring physiologic processes within OOCs is vital for the continuous impro...

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Autores principales: Clement, Christoph, Birindelli, Gabriele, Pizzichemi, Marco, Pagano, Fiammetta, Julio, Marianna Kruithof‑De, Ziegler, Sibylle, Rominger, Axel, Aufray, Etiennette, Shi, Kuangyu
Lenguaje:eng
Publicado: 2022
Materias:
Acceso en línea:https://dx.doi.org/10.1186/s40658-022-00467-x
http://cds.cern.ch/record/2852841
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author Clement, Christoph
Birindelli, Gabriele
Pizzichemi, Marco
Pagano, Fiammetta
Julio, Marianna Kruithof‑De
Ziegler, Sibylle
Rominger, Axel
Aufray, Etiennette
Shi, Kuangyu
author_facet Clement, Christoph
Birindelli, Gabriele
Pizzichemi, Marco
Pagano, Fiammetta
Julio, Marianna Kruithof‑De
Ziegler, Sibylle
Rominger, Axel
Aufray, Etiennette
Shi, Kuangyu
author_sort Clement, Christoph
collection CERN
description Organs-on-Chips (OOCs), microdevices mimicking in vivo organs, find growing applications in disease modeling and drug discovery. With the increasing number of uses comes a strong demand for imaging capabilities of OOCs as monitoring physiologic processes within OOCs is vital for the continuous improvement of this technology. Positron Emission Tomography (PET) would be ideal for OOC imaging, however, current PET systems are insufficient for this task due to their inadequate spatial resolution. In this work, we propose the concept of an On-Chip PET system capable of imaging OOCs and optimize its design using a Monte Carlo Simulation (MCS).Material and methodsThe proposed system consists of four detectors arranged around the OOC device. Each detector is made of two monolithic LYSO crystals and covered with Silicon photomultipliers (SiPMs) on multiple surfaces. We use a Convolutional Neural Network (CNN) trained with data from a MCS to predict the first gamma-ray interaction position inside the detector from the light patterns that are recorded by the SiPMs on the detector’s surfaces.ResultsThe CNN achieves a mean average prediction error of 0.80 mm in the best configuration. The proposed system achieves a sensitivity of 34.81% for 13 mm thick crystals and does not show a prediction degradation near the boundaries of the detector. We use the trained network to reconstruct an image of a grid of 21 point sources spread across the field-of-view and obtain a mean spatial resolution of 0.55 mm. We show that 25,000 Line of Responses (LORs) are needed to reconstruct a realistic OOC phantom with adequate image quality.ConclusionsWe demonstrate that it is possible to achieve a spatial resolution of almost 0.5 mm in a PET system made of multiple monolithic LYSO crystals by directly predicting the scintillation position from light patterns created with SiPMs. We observe that a thinner crystal performs better than a thicker one, that increasing the SiPM size from 3 mm to 6 mm only slightly decreases the prediction performance, and that certain surfaces encode significantly more information for the scintillation-point prediction than others.
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publishDate 2022
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spelling cern-28528412023-03-21T15:31:46Zdoi:10.1186/s40658-022-00467-xhttp://cds.cern.ch/record/2852841engClement, ChristophBirindelli, GabrielePizzichemi, MarcoPagano, FiammettaJulio, Marianna Kruithof‑DeZiegler, SibylleRominger, AxelAufray, EtiennetteShi, KuangyuConcept development of an on-chip PET systemHealth Physics and Radiation EffectsOrgans-on-Chips (OOCs), microdevices mimicking in vivo organs, find growing applications in disease modeling and drug discovery. With the increasing number of uses comes a strong demand for imaging capabilities of OOCs as monitoring physiologic processes within OOCs is vital for the continuous improvement of this technology. Positron Emission Tomography (PET) would be ideal for OOC imaging, however, current PET systems are insufficient for this task due to their inadequate spatial resolution. In this work, we propose the concept of an On-Chip PET system capable of imaging OOCs and optimize its design using a Monte Carlo Simulation (MCS).Material and methodsThe proposed system consists of four detectors arranged around the OOC device. Each detector is made of two monolithic LYSO crystals and covered with Silicon photomultipliers (SiPMs) on multiple surfaces. We use a Convolutional Neural Network (CNN) trained with data from a MCS to predict the first gamma-ray interaction position inside the detector from the light patterns that are recorded by the SiPMs on the detector’s surfaces.ResultsThe CNN achieves a mean average prediction error of 0.80 mm in the best configuration. The proposed system achieves a sensitivity of 34.81% for 13 mm thick crystals and does not show a prediction degradation near the boundaries of the detector. We use the trained network to reconstruct an image of a grid of 21 point sources spread across the field-of-view and obtain a mean spatial resolution of 0.55 mm. We show that 25,000 Line of Responses (LORs) are needed to reconstruct a realistic OOC phantom with adequate image quality.ConclusionsWe demonstrate that it is possible to achieve a spatial resolution of almost 0.5 mm in a PET system made of multiple monolithic LYSO crystals by directly predicting the scintillation position from light patterns created with SiPMs. We observe that a thinner crystal performs better than a thicker one, that increasing the SiPM size from 3 mm to 6 mm only slightly decreases the prediction performance, and that certain surfaces encode significantly more information for the scintillation-point prediction than others.oai:cds.cern.ch:28528412022
spellingShingle Health Physics and Radiation Effects
Clement, Christoph
Birindelli, Gabriele
Pizzichemi, Marco
Pagano, Fiammetta
Julio, Marianna Kruithof‑De
Ziegler, Sibylle
Rominger, Axel
Aufray, Etiennette
Shi, Kuangyu
Concept development of an on-chip PET system
title Concept development of an on-chip PET system
title_full Concept development of an on-chip PET system
title_fullStr Concept development of an on-chip PET system
title_full_unstemmed Concept development of an on-chip PET system
title_short Concept development of an on-chip PET system
title_sort concept development of an on-chip pet system
topic Health Physics and Radiation Effects
url https://dx.doi.org/10.1186/s40658-022-00467-x
http://cds.cern.ch/record/2852841
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