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IoMT-Based Automated Detection and Classification of Leukemia Using Deep Learning.

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TLDR
An Internet of Medical Things- (IoMT-) based framework to enhance and provide a quick and safe identification of leukemia and demonstrated that the suggested models supersede the other well-known machine learning algorithms used for healthy-versus-leukemia-subtypes identification.
Abstract
For the last few years, computer-aided diagnosis (CAD) has been increasing rapidly. Numerous machine learning algorithms have been developed to identify different diseases, e.g., leukemia. Leukemia is a white blood cells- (WBC-) related illness affecting the bone marrow and/or blood. A quick, safe, and accurate early-stage diagnosis of leukemia plays a key role in curing and saving patients' lives. Based on developments, leukemia consists of two primary forms, i.e., acute and chronic leukemia. Each form can be subcategorized as myeloid and lymphoid. There are, therefore, four leukemia subtypes. Various approaches have been developed to identify leukemia with respect to its subtypes. However, in terms of effectiveness, learning process, and performance, these methods require improvements. This study provides an Internet of Medical Things- (IoMT-) based framework to enhance and provide a quick and safe identification of leukemia. In the proposed IoMT system, with the help of cloud computing, clinical gadgets are linked to network resources. The system allows real-time coordination for testing, diagnosis, and treatment of leukemia among patients and healthcare professionals, which may save both time and efforts of patients and clinicians. Moreover, the presented framework is also helpful for resolving the problems of patients with critical condition in pandemics such as COVID-19. The methods used for the identification of leukemia subtypes in the suggested framework are Dense Convolutional Neural Network (DenseNet-121) and Residual Convolutional Neural Network (ResNet-34). Two publicly available datasets for leukemia, i.e., ALL-IDB and ASH image bank, are used in this study. The results demonstrated that the suggested models supersede the other well-known machine learning algorithms used for healthy-versus-leukemia-subtypes identification.

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Journal ArticleDOI

Potential of Internet of Medical Things (IoMT) applications in building a smart healthcare system: A systematic review

TL;DR: In this article , the authors identify the role of Internet of Medical Things (IoMT) applications in improving healthcare system and analyze the status of research demonstrating effectiveness of IoMT benefits to the patient and healthcare system along with a brief insight into technologies supplementing IoMT and challenges faced in developing a smart healthcare system.
Journal ArticleDOI

LeuFeatx: Deep learning-based feature extractor for the diagnosis of acute leukemia from microscopic images of peripheral blood smear

TL;DR: In this article , a two-step methodology for the robust classification of leukocytes for leukemia diagnosis by building a VGG16-adapted fine-tuned feature-extractor model, termed as "LeuFeatx", was presented.
Journal ArticleDOI

The internet of medical things and artificial intelligence: trends, challenges, and opportunities

TL;DR: In this paper , the role of artificial intelligence (AI) in recent advances on IoMT is reviewed and a comprehensive list of major benefits and challenges is presented as well. And the WMDs classification is also performed based on their technology.
Journal ArticleDOI

A Deep Learning Framework for Leukemia Cancer Detection in Microscopic Blood Samples Using Squeeze and Excitation Learning

TL;DR: A new variant of deep learning algorithm to diagnose leukemia disease by analyzing the microscopic images of blood samples by incorporating the squeeze and excitation learning that recursively performs recalibration on channel-wise feature outputs by modeling channel interdependencies explicitly.
Journal ArticleDOI

Exploiting pretrained CNN models for the development of an EEG-based robust BCI framework

TL;DR: In this paper , a pretrained convolutional neural network (CNN)-based new automated framework was proposed for robust BCI systems with small and ample samples of motor and mental imagery EEG training data.
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TL;DR: Deep learning is making major advances in solving problems that have resisted the best attempts of the artificial intelligence community for many years, and will have many more successes in the near future because it requires very little engineering by hand and can easily take advantage of increases in the amount of available computation and data.
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