2021
DOI: 10.3390/diagnostics11112109
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Ten Fast Transfer Learning Models for Carotid Ultrasound Plaque Tissue Characterization in Augmentation Framework Embedded with Heatmaps for Stroke Risk Stratification

Abstract: Background and Purpose: Only 1–2% of the internal carotid artery asymptomatic plaques are unstable as a result of >80% stenosis. Thus, unnecessary efforts can be saved if these plaques can be characterized and classified into symptomatic and asymptomatic using non-invasive B-mode ultrasound. Earlier plaque tissue characterization (PTC) methods were machine learning (ML)-based, which used hand-crafted features that yielded lower accuracy and unreliability. The proposed study shows the role of transfer learni… Show more

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Cited by 33 publications
(29 citation statements)
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“…Note that the unseen data (2450) was also not augmented. While several studies have been published that used the augmentation protocol [ 36 , 90 , 94 , 133 , 134 , 135 ] during classification, our DenseNet models for classification were never modified and never underwent change in rotation, tilt, or orientation. Further, note that we used the DICOM image directly, which contains orientation information.…”
Section: Discussionmentioning
confidence: 99%
“…Note that the unseen data (2450) was also not augmented. While several studies have been published that used the augmentation protocol [ 36 , 90 , 94 , 133 , 134 , 135 ] during classification, our DenseNet models for classification were never modified and never underwent change in rotation, tilt, or orientation. Further, note that we used the DICOM image directly, which contains orientation information.…”
Section: Discussionmentioning
confidence: 99%
“…(iii) Association of radiomics and genomics: In this step, both the radiomics features and genomics features of the cancer patients are combined to understand the tissue-level characterization of the cancerous regions or non-cancerous regions from the radiomics feature [ 51 , 52 , 53 ].…”
Section: An Insight Of Radiogenomicsmentioning
confidence: 99%
“…Similarly, various statistical tests, performance evaluation parameters, and performance analysis metrics have been involved in the data analysis of radiogenomics. The lesion localization analysis can be conducted by heatmap analysis for deep diagnosis [ 52 ].…”
Section: An Insight Of Radiogenomicsmentioning
confidence: 99%
“…In the extension of the work, we will make an effort for the advancement of the system, as it could be able to detect COVID-19 as well as the severity of the disease. In addition, we will include the heatmap images [127][128][129] of the disease, which will show the affected areas of the lungs. Broader advanced one-pass machine learning such as extreme learning machines [130] can be explored as more data are collected along with pruning methods [131][132][133] to lower the storage and improve the speed.…”
Section: Strengths Weaknesses and Extensionsmentioning
confidence: 99%