2022
DOI: 10.1007/s40846-022-00750-3
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Non-invasive Estimation of Clinical Severity of Anemia Using Hierarchical Ensemble Classifiers

Abstract: Current techniques of anemia classification are either invasive, expensive or inaccurate, making them illsuited for community health-worker based screening programs. In this study, we propose an Artificial Intelligence (AI) based anemia classification method using a multi-wavelength non-invasive photometry device. A finger mounted photo-plethysmogram (PPG) device was designed to acquire PPG signals at four wavelengths (590, 660, 810, and 940 nm). A set of 13 attenuation and ratio-of-ratio features, derived usi… Show more

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Cited by 6 publications
(1 citation statement)
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“…Our focus will be on the remarkable potential of machine learning algorithms, which have been designed to complement and enhance traditional techniques, revolutionizing anemia diagnosis in the process. Reference [24] proposed a non-invasive method of anemia classification using a multi-wavelength photometry sensor and a novel classification algorithm based on hierarchical ensemble classifiers. They leveraged recent advancements in machine learning to develop a non-invasive approach for estimating the clinical severity of anemia.…”
Section: IImentioning
confidence: 99%
“…Our focus will be on the remarkable potential of machine learning algorithms, which have been designed to complement and enhance traditional techniques, revolutionizing anemia diagnosis in the process. Reference [24] proposed a non-invasive method of anemia classification using a multi-wavelength photometry sensor and a novel classification algorithm based on hierarchical ensemble classifiers. They leveraged recent advancements in machine learning to develop a non-invasive approach for estimating the clinical severity of anemia.…”
Section: IImentioning
confidence: 99%