Towards optimal patch size in vision transformers for tumor segmentation Conference Paper


Authors: Mojtahedi, R.; Hamghalam, M.; Do, R. K. G.; Simpson, A. L.
Title: Towards optimal patch size in vision transformers for tumor segmentation
Conference Title: Third International Workshop of Multiscale Multimodal Medical Imaging (MMMI) 2022, held in conjunction with MICCAI 2022
Abstract: Detection of tumors in metastatic colorectal cancer (mCRC) plays an essential role in the early diagnosis and treatment of liver cancer. Deep learning models backboned by fully convolutional neural networks (FCNNs) have become the dominant model for segmenting 3D computerized tomography (CT) scans. However, since their convolution layers suffer from limited kernel size, they are not able to capture long-range dependencies and global context. To tackle this restriction, vision transformers have been introduced to solve FCNN’s locality of receptive fields. Although transformers can capture long-range features, their segmentation performance decreases with various tumor sizes due to the model sensitivity to the input patch size. While finding an optimal patch size improves the performance of vision transformer-based models on segmentation tasks, it is a time-consuming and challenging procedure. This paper proposes a technique to select the vision transformer’s optimal input multi-resolution image patch size based on the average volume size of metastasis lesions. We further validated our suggested framework using a transfer-learning technique, demonstrating that the highest Dice similarity coefficient (DSC) performance was obtained by pre-training on training data with a larger tumour volume using the suggested ideal patch size and then training with a smaller one. We experimentally evaluate this idea through pre-training our model on a multi-resolution public dataset. Our model showed consistent and improved results when applied to our private multi-resolution mCRC dataset with a smaller average tumor volume. This study lays the groundwork for optimizing semantic segmentation of small objects using vision transformers. The implementation source code is available at: https://github.com/Ramtin-Mojtahedi/OVTPS. © 2022, The Author(s), under exclusive license to Springer Nature Switzerland AG.
Keywords: computerized tomography; medical imaging; tumors; early diagnosis; liver tumor; diagnosis; tumor volumes; diseases; performance; semantics; tumor segmentation; liver tumors; deep learning; convolution; convolutional neural network; semantic segmentation; convolutional neural networks; transfer learning; ct segmentation; vision transformer; 3d modeling; computerized tomography segmentation; patch size; pre-training
Journal Title Lecture Notes in Computer Science
Volume: 13594
Conference Dates: 2022 Sep 22
Conference Location: Singapore
ISBN: 0302-9743
Publisher: Springer  
Date Published: 2022-01-01
Start Page: 110
End Page: 120
Language: English
DOI: 10.1007/978-3-031-18814-5_11
PROVIDER: scopus
DOI/URL:
Notes: Conference Paper -- Export Date: 1 December 2022 -- Source: Scopus
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