2021
DOI: 10.1155/2021/2751695
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Data Homogeneity Effect in Deep Learning-Based Prediction of Type 1 Diabetic Retinopathy

Abstract: This study is aimed at evaluating a deep transfer learning-based model for identifying diabetic retinopathy (DR) that was trained using a dataset with high variability and predominant type 2 diabetes (T2D) and comparing model performance with that in patients with type 1 diabetes (T1D). The Kaggle dataset, which is a publicly available dataset, was divided into training and testing Kaggle datasets. In the comparison dataset, we collected retinal fundus images of T1D patients at Chang Gung Memorial Hospital in … Show more

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Cited by 3 publications
(1 citation statement)
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“…By employing the power spectral entropy, we demonstrate that the recurrence-based power spectra contain more information; they are more homogeneous when measured at different times of the noisy signal, and they show stronger uniqueness, when compared to similar signals of the same attractor. Homogeneity is important because it increases ML trainability and efficiency and allows task specific network designs [57,58]. Uniqueness is significant because it leads to higher discriminative power of features and fewer class overlaps reduce false predictions [53].…”
Section: Discussionmentioning
confidence: 99%
“…By employing the power spectral entropy, we demonstrate that the recurrence-based power spectra contain more information; they are more homogeneous when measured at different times of the noisy signal, and they show stronger uniqueness, when compared to similar signals of the same attractor. Homogeneity is important because it increases ML trainability and efficiency and allows task specific network designs [57,58]. Uniqueness is significant because it leads to higher discriminative power of features and fewer class overlaps reduce false predictions [53].…”
Section: Discussionmentioning
confidence: 99%