Heart Failure Detection Using Quantum-Enhanced Machine Learning and Traditional Machine Learning Techniques for Internet of Artificially Intelligent Medical Things

Quantum-enhanced machine learning plays a vital role in healthcare because of its robust application concerning current research scenarios, the growth of novel medical trials, patient information and record management, procurement of chronic disease detection, and many more. Due to this reason, the...

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Veröffentlicht in:Wireless communications and mobile computing 2021, Vol.2021 (1)
Hauptverfasser: Kumar, Yogesh, Koul, Apeksha, Sisodia, Pushpendra Singh, Shafi, Jana, Verma, Kavita, Gheisari, Mehdi, Davoodi, Mohamad Bagher
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container_issue 1
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container_title Wireless communications and mobile computing
container_volume 2021
creator Kumar, Yogesh
Koul, Apeksha
Sisodia, Pushpendra Singh
Shafi, Jana
Verma, Kavita
Gheisari, Mehdi
Davoodi, Mohamad Bagher
description Quantum-enhanced machine learning plays a vital role in healthcare because of its robust application concerning current research scenarios, the growth of novel medical trials, patient information and record management, procurement of chronic disease detection, and many more. Due to this reason, the healthcare industry is applying quantum computing to sustain patient-oriented attention to healthcare patrons. The present work summarized the recent research progress in quantum-enhanced machine learning and its significance in heart failure detection on a dataset of 14 attributes. In this paper, the number of qubits in terms of the features of heart failure data is normalized by using min-max, PCA, and standard scalar, and further, has been optimized using the pipelining technique. The current work verifies that quantum-enhanced machine learning algorithms such as quantum random forest (QRF), quantum K nearest neighbour (QKNN), quantum decision tree (QDT), and quantum Gaussian Naïve Bayes (QGNB) are better than traditional machine learning algorithms in heart failure detection. The best accuracy rate is (0.89), which the quantum random forest classifier attained. In addition to this, the quantum random forest classifier also incurred the best results in F1 score, recall and, precision by (0.88), (0.93), and (0.89), respectively. The computation time taken by traditional and quantum-enhanced machine learning algorithms has also been compared where the quantum random forest has the least execution time by 150 microseconds. Hence, the work provides a way to quantify the differences between standard and quantum-enhanced machine learning algorithms to select the optimal method for detecting heart failure.
doi_str_mv 10.1155/2021/1616725
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source Wiley Online Library Open Access; EZB-FREE-00999 freely available EZB journals; Alma/SFX Local Collection
subjects Accuracy
Algorithms
Big Data
Cardiac arrhythmia
Classifiers
Computers
Decision trees
Dyspnea
Failure detection
Health care
Health care industry
Heart failure
Information management
Internet
Machine learning
Medical equipment
Medical research
Mortality
Procurement management
Quantum computing
Qubits (quantum computing)
Sensors
title Heart Failure Detection Using Quantum-Enhanced Machine Learning and Traditional Machine Learning Techniques for Internet of Artificially Intelligent Medical Things
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