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yumin kim committed Jun 27, 2024
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Expand Up @@ -950,12 +950,14 @@ <h2 class="title is-3">Abstract</h2>
Reducing scan time in Positron Emission Tomography (PET) imaging while maintaining high-quality images is crucial for minimizing patient discomfort and radiation exposure.
Due to the limited size of datasets and distribution discrepancy across scanners in medical imaging, fine-tuning in a parameter-efficient and effective manner is on the rise.
Motivated by the potential of Parameter-Efficient Fine-Tuning (PEFT), we aim to address these issues by effectively leveraging PEFT to improve limited data and GPU resource issues in multi-scanner setups.
In this paper, we introduce PETITE, Parameter-Efficient Fine-Tuning for MultI-scanner PET to PET REconstruction that uses fewer than 1% of the parameters.
To the best of our knowledge, this study is the first to systematically explore the efficacy of diverse PEFT techniques in medical imaging reconstruction tasks via prevalent encoder-decoder-type deep models.
This investigation, in particular, brings intriguing insights into PETITE as we show further improvements by treating encoder and decoder separately and mixing different PEFT methods, namely, Mix-PEFT.
Using multi-scanner PET datasets comprised of five different scanners, we extensively test the cross-scanner PET scan time reduction performances (i.e., a model pre-trained on one scanner is fine-tuned on a different scanner) of 21 feasible Mix-PEFT combinations to derive optimal PETITE.
We show that training with less than 1% parameters using PETITE performs on par with full fine-tuning (i.e., 100% parameter).
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In this paper, we introduce <b>PETITE</b>, Parameter-Efficient Fine-Tuning for MultI-scanner PET to PET REconstruction which represents the optimal PEFT combination when independently
applying encoder-decoder components to each model architecture.
To the best of our knowledge, this study is the first to systematically explore the efficacy of diverse PEFT techniques in medical imaging reconstruction tasks
via prevalent encoder-decoder models. This investigation, in particular, brings intriguing insights into PETITE as we show further improvements by treating
encoder and decoder separately and mixing different PEFT methods, namely, Mix-PEFT.
Using multi-scanner PET datasets comprised of five different scanners, we extensively test the cross-scanner PET scan time
reduction performances (i.e., a model pre-trained on one scanner is fine-tuned on a different scanner) of 21 feasible Mix-PEFT combinations to
derive optimal PETITE. We show that training with less than 1% parameters using PETITE performs on par with full fine-tuning (i.e., 100% parameter).
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Expand Down Expand Up @@ -989,8 +991,7 @@ <h4 class="title is-4 has-text-centered">Pipeline</h4>
The overview of <i>PETITE</i>: Scheme for single source-target settings in PET
scan time reduction with PEFT.
<br>
The most optimal PEFT combination when applying encoder-decoder to each
model architecture. <br>To the best of our knowledge, this extensive study represents the first
The optimal PEFT combination independently applying encoder-decoder components to each model architecture. <br>To the best of our knowledge, this extensive study represents the first
application of the PEFT methodology within the field of medical imaging.

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