Edge Computing for AI-Based Brain MRI Applications: A Critical Evaluation of Real-Time Classification and Segmentation

Medical imaging plays a pivotal role in diagnostic medicine with technologies like Magnetic Resonance Imagining (MRI), Computed Tomography (CT), Positron Emission Tomography (PET), and ultrasound scans being widely used to assist radiologists and medical experts in reaching concrete diagnosis. Given...

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Published in:SENSORS
Main Authors: Memon, Khuhed; Yahya, Norashikin; Yusoff, Mohd Zuki; Remli, Rabani; Mustapha, Aida-Widure Mustapha Mohd; Hashim, Hilwati; Ali, Syed Saad Azhar; Siddiqui, Shahabuddin
Format: Article
Language:English
Published: MDPI 2024
Subjects:
Online Access:https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001351005700001
author Memon
Khuhed; Yahya
Norashikin; Yusoff
Mohd Zuki; Remli
Rabani; Mustapha
Aida-Widure Mustapha Mohd; Hashim
Hilwati; Ali
Syed Saad Azhar; Siddiqui
Shahabuddin
spellingShingle Memon
Khuhed; Yahya
Norashikin; Yusoff
Mohd Zuki; Remli
Rabani; Mustapha
Aida-Widure Mustapha Mohd; Hashim
Hilwati; Ali
Syed Saad Azhar; Siddiqui
Shahabuddin
Edge Computing for AI-Based Brain MRI Applications: A Critical Evaluation of Real-Time Classification and Segmentation
Chemistry; Engineering; Instruments & Instrumentation
author_facet Memon
Khuhed; Yahya
Norashikin; Yusoff
Mohd Zuki; Remli
Rabani; Mustapha
Aida-Widure Mustapha Mohd; Hashim
Hilwati; Ali
Syed Saad Azhar; Siddiqui
Shahabuddin
author_sort Memon
spelling Memon, Khuhed; Yahya, Norashikin; Yusoff, Mohd Zuki; Remli, Rabani; Mustapha, Aida-Widure Mustapha Mohd; Hashim, Hilwati; Ali, Syed Saad Azhar; Siddiqui, Shahabuddin
Edge Computing for AI-Based Brain MRI Applications: A Critical Evaluation of Real-Time Classification and Segmentation
SENSORS
English
Article
Medical imaging plays a pivotal role in diagnostic medicine with technologies like Magnetic Resonance Imagining (MRI), Computed Tomography (CT), Positron Emission Tomography (PET), and ultrasound scans being widely used to assist radiologists and medical experts in reaching concrete diagnosis. Given the recent massive uplift in the storage and processing capabilities of computers, and the publicly available big data, Artificial Intelligence (AI) has also started contributing to improving diagnostic radiology. Edge computing devices and handheld gadgets can serve as useful tools to process medical data in remote areas with limited network and computational resources. In this research, the capabilities of multiple platforms are evaluated for the real-time deployment of diagnostic tools. MRI classification and segmentation applications developed in previous studies are used for testing the performance using different hardware and software configurations. Cost-benefit analysis is carried out using a workstation with a NVIDIA Graphics Processing Unit (GPU), Jetson Xavier NX, Raspberry Pi 4B, and Android phone, using MATLAB, Python, and Android Studio. The mean computational times for the classification app on the PC, Jetson Xavier NX, and Raspberry Pi are 1.2074, 3.7627, and 3.4747 s, respectively. On the low-cost Android phone, this time is observed to be 0.1068 s using the Dynamic Range Quantized TFLite version of the baseline model, with slight degradation in accuracy. For the segmentation app, the times are 1.8241, 5.2641, 6.2162, and 3.2023 s, respectively, when using JPEG inputs. The Jetson Xavier NX and Android phone stand out as the best platforms due to their compact size, fast inference times, and affordability.
MDPI

1424-8220
2024
24
21
10.3390/s24217091
Chemistry; Engineering; Instruments & Instrumentation

WOS:001351005700001
https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001351005700001
title Edge Computing for AI-Based Brain MRI Applications: A Critical Evaluation of Real-Time Classification and Segmentation
title_short Edge Computing for AI-Based Brain MRI Applications: A Critical Evaluation of Real-Time Classification and Segmentation
title_full Edge Computing for AI-Based Brain MRI Applications: A Critical Evaluation of Real-Time Classification and Segmentation
title_fullStr Edge Computing for AI-Based Brain MRI Applications: A Critical Evaluation of Real-Time Classification and Segmentation
title_full_unstemmed Edge Computing for AI-Based Brain MRI Applications: A Critical Evaluation of Real-Time Classification and Segmentation
title_sort Edge Computing for AI-Based Brain MRI Applications: A Critical Evaluation of Real-Time Classification and Segmentation
container_title SENSORS
language English
format Article
description Medical imaging plays a pivotal role in diagnostic medicine with technologies like Magnetic Resonance Imagining (MRI), Computed Tomography (CT), Positron Emission Tomography (PET), and ultrasound scans being widely used to assist radiologists and medical experts in reaching concrete diagnosis. Given the recent massive uplift in the storage and processing capabilities of computers, and the publicly available big data, Artificial Intelligence (AI) has also started contributing to improving diagnostic radiology. Edge computing devices and handheld gadgets can serve as useful tools to process medical data in remote areas with limited network and computational resources. In this research, the capabilities of multiple platforms are evaluated for the real-time deployment of diagnostic tools. MRI classification and segmentation applications developed in previous studies are used for testing the performance using different hardware and software configurations. Cost-benefit analysis is carried out using a workstation with a NVIDIA Graphics Processing Unit (GPU), Jetson Xavier NX, Raspberry Pi 4B, and Android phone, using MATLAB, Python, and Android Studio. The mean computational times for the classification app on the PC, Jetson Xavier NX, and Raspberry Pi are 1.2074, 3.7627, and 3.4747 s, respectively. On the low-cost Android phone, this time is observed to be 0.1068 s using the Dynamic Range Quantized TFLite version of the baseline model, with slight degradation in accuracy. For the segmentation app, the times are 1.8241, 5.2641, 6.2162, and 3.2023 s, respectively, when using JPEG inputs. The Jetson Xavier NX and Android phone stand out as the best platforms due to their compact size, fast inference times, and affordability.
publisher MDPI
issn
1424-8220
publishDate 2024
container_volume 24
container_issue 21
doi_str_mv 10.3390/s24217091
topic Chemistry; Engineering; Instruments & Instrumentation
topic_facet Chemistry; Engineering; Instruments & Instrumentation
accesstype
id WOS:001351005700001
url https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001351005700001
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