Title |
MobileNet-SVM: a lightweight deep transfer learning model to diagnose BCH scans for IoMT-based imaging sensors / |
Authors |
Ogundokun, Roseline Oluwaseun ; Misra, Sanjay ; Akinrotimi, Akinyemi Omololu ; Ogul, Hasan |
DOI |
10.3390/s23020656 |
Full Text |
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Is Part of |
Sensors.. Basel : MDPI. 2023, vol. 23, iss. 2, art. no. 656, p. 1-23.. ISSN 1424-8220 |
Keywords [eng] |
internet of medical things ; breast cancer histology ; deep convolutional neural network |
Abstract [eng] |
Many individuals worldwide pass away as a result of inadequate procedures for prompt illness identification and subsequent treatment. A valuable life can be saved or at least extended with the early identification of serious illnesses, such as various cancers and other life-threatening conditions. The development of the Internet of Medical Things (IoMT) has made it possible for healthcare technology to offer the general public efficient medical services and make a significant contribution to patients' recoveries. By using IoMT to diagnose and examine BreakHis v1 400× breast cancer histology (BCH) scans, disorders may be quickly identified and appropriate treatment can be given to a patient. Imaging equipment having the capability of auto-analyzing acquired pictures can be used to achieve this. However, the majority of deep learning (DL)-based image classification approaches are of a large number of parameters and unsuitable for application in IoMT-centered imaging sensors. The goal of this study is to create a lightweight deep transfer learning (DTL) model suited for BCH scan examination and has a good level of accuracy. In this study, a lightweight DTL-based model "MobileNet-SVM", which is the hybridization of MobileNet and Support Vector Machine (SVM), for auto-classifying BreakHis v1 400× BCH images is presented. When tested against a real dataset of BreakHis v1 400× BCH images, the suggested technique achieved a training accuracy of 100% on the training dataset. It also obtained an accuracy of 91% and an F1-score of 91.35 on the test dataset. Considering how complicated BCH scans are, the findings are encouraging. The MobileNet-SVM model is ideal for IoMT imaging equipment in addition to having a high degree of precision. According to the simulation findings, the suggested model requires a small computation speed and time. |
Published |
Basel : MDPI |
Type |
Journal article |
Language |
English |
Publication date |
2023 |
CC license |
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