2023
DOI: 10.1101/2023.05.31.23290789
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Uncovering the effects of model initialization on deep model generalization: A study with adult and pediatric chest X-ray images

Abstract: Model initialization techniques are vital for improving the performance and reliability of deep learning models in medical computer vision applications. While much literature exists on non-medical images, the impacts on medical images, particularly chest X-rays (CXRs) are less understood. Addressing this gap, our study explores three deep model initialization techniques: Cold-start, Warm-start, and Shrink and Perturb start, focusing on adult and pediatric populations. We specifically focus on scenarios with pe… Show more

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