TY - GEN
T1 - Connecting the Dots
T2 - 31st Irish Conference on Artificial Intelligence and Cognitive Science, AICS 2023
AU - Singh, Aryan
AU - Van De Ven, Pepijn
AU - Eising, Ciaran
AU - Denny, Patrick
N1 - Publisher Copyright:
© 2023 IEEE.
PY - 2023
Y1 - 2023
N2 - Deep learning models have demonstrated remarkable results for various computer vision tasks, including the realm of medical imaging. However, their application in the medical domain is limited due to the requirement for large amounts of training data, which can be both challenging and expensive to obtain. To mitigate this, pretrained models have been fine-tuned on domain-specific data, but such an approach can suffer from inductive biases. Furthermore, deep learning models struggle to learn the relationship between spatially distant features and their importance, as convolution operations treat all pixels equally. Pioneering a novel solution to this challenge, we employ the Image Foresting Transform to optimally segment images into superpixelse These superpixels are subsequently transformed into graph-structured data, enabling the proficient extraction of features and modeling of relationships using Graph Neural Networks (GNNs). Our method harnesses an ensemble of three distinct GNN architectures to boost its robustness. In our evaluations targeting pneumonia classification, our methodology surpassed prevailing Deep Neural Networks (DNNs) in performance, all while drastically cutting down on the parameter count. This not only trims down the expenses tied to data but also accelerates training and minimizes bias. Consequently, our proposition offers a sturdy, economically viable, and scalable strategy for medical image classification, significantly diminishing dependency on extensive training data sets. Our code is available at Github.
AB - Deep learning models have demonstrated remarkable results for various computer vision tasks, including the realm of medical imaging. However, their application in the medical domain is limited due to the requirement for large amounts of training data, which can be both challenging and expensive to obtain. To mitigate this, pretrained models have been fine-tuned on domain-specific data, but such an approach can suffer from inductive biases. Furthermore, deep learning models struggle to learn the relationship between spatially distant features and their importance, as convolution operations treat all pixels equally. Pioneering a novel solution to this challenge, we employ the Image Foresting Transform to optimally segment images into superpixelse These superpixels are subsequently transformed into graph-structured data, enabling the proficient extraction of features and modeling of relationships using Graph Neural Networks (GNNs). Our method harnesses an ensemble of three distinct GNN architectures to boost its robustness. In our evaluations targeting pneumonia classification, our methodology surpassed prevailing Deep Neural Networks (DNNs) in performance, all while drastically cutting down on the parameter count. This not only trims down the expenses tied to data but also accelerates training and minimizes bias. Consequently, our proposition offers a sturdy, economically viable, and scalable strategy for medical image classification, significantly diminishing dependency on extensive training data sets. Our code is available at Github.
KW - Classification
KW - Computer vision
KW - Graph Neural Networks
KW - Medical imaging
UR - http://www.scopus.com/inward/record.url?scp=85189935391&partnerID=8YFLogxK
U2 - 10.1109/AICS60730.2023.10470787
DO - 10.1109/AICS60730.2023.10470787
M3 - Conference contribution
AN - SCOPUS:85189935391
T3 - 2023 31st Irish Conference on Artificial Intelligence and Cognitive Science, AICS 2023
BT - 2023 31st Irish Conference on Artificial Intelligence and Cognitive Science, AICS 2023
PB - Institute of Electrical and Electronics Engineers Inc.
Y2 - 7 December 2023 through 8 December 2023
ER -