Challenges and Prospects of Deploying AI and Machine Learning for Clinical Diagnosis in African Healthcare

The integration of artificial intelligence (AI), machine learning (ML), and robotics into clinical diagnosis has become prevalent. For example, ML-driven image recognition has demonstrated remarkable efficacy, prompting clinicians to rely increasingly on these technologies for “accurate” medical di...

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Main Author: Edmund Terem Ugar
Format: Article
Language:English
Published: University of Johannesburg 2025-01-01
Series:The Thinker
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Online Access:https://journals.uj.ac.za/index.php/The_Thinker/article/view/3951
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author Edmund Terem Ugar
author_facet Edmund Terem Ugar
author_sort Edmund Terem Ugar
collection DOAJ
description The integration of artificial intelligence (AI), machine learning (ML), and robotics into clinical diagnosis has become prevalent. For example, ML-driven image recognition has demonstrated remarkable efficacy, prompting clinicians to rely increasingly on these technologies for “accurate” medical diagnoses and prognoses of diseases. Although these advancements have exhibited their relevance and effectiveness in medically advanced regions of the Global North and selected areas in the Global South, the question arises as to their viability within the healthcare landscape of Africa, given contextual variations. In this paper, I delve into the potential efficiency of deploying these technologies within African healthcare, aiming to address these contextual concerns. Employing a phenomenological methodology, I demonstrate that the deployment of these technologies might inadvertently introduce biases and discrimination against Africans. This stems from the inherent nature of the data used to develop these technologies, primarily sourced from healthcare experiences in designing nations, coupled with the pervasive algorithmic biases prevalent in contemporary ML systems. I call for a paradigm shift in AI and ML development. I propose that African nations should proactively engage in the design of healthcare AI and ML technologies that are attuned to distinct African conditions, prevalent medical conditions, and prognostic methodologies. Key prerequisites include the establishment of robust infrastructure for efficient data collection and storage of electronic healthcare records and capturing the intricacies of day-to-day healthcare encounters across the African continent. 
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spelling doaj-art-dd093ab07261456e87d27311af6781ac2025-01-30T09:01:17ZengUniversity of JohannesburgThe Thinker2075-24582616-907X2025-01-01101410.36615/dpfmva63Challenges and Prospects of Deploying AI and Machine Learning for Clinical Diagnosis in African HealthcareEdmund Terem Ugar0University of Johannesburg The integration of artificial intelligence (AI), machine learning (ML), and robotics into clinical diagnosis has become prevalent. For example, ML-driven image recognition has demonstrated remarkable efficacy, prompting clinicians to rely increasingly on these technologies for “accurate” medical diagnoses and prognoses of diseases. Although these advancements have exhibited their relevance and effectiveness in medically advanced regions of the Global North and selected areas in the Global South, the question arises as to their viability within the healthcare landscape of Africa, given contextual variations. In this paper, I delve into the potential efficiency of deploying these technologies within African healthcare, aiming to address these contextual concerns. Employing a phenomenological methodology, I demonstrate that the deployment of these technologies might inadvertently introduce biases and discrimination against Africans. This stems from the inherent nature of the data used to develop these technologies, primarily sourced from healthcare experiences in designing nations, coupled with the pervasive algorithmic biases prevalent in contemporary ML systems. I call for a paradigm shift in AI and ML development. I propose that African nations should proactively engage in the design of healthcare AI and ML technologies that are attuned to distinct African conditions, prevalent medical conditions, and prognostic methodologies. Key prerequisites include the establishment of robust infrastructure for efficient data collection and storage of electronic healthcare records and capturing the intricacies of day-to-day healthcare encounters across the African continent.  https://journals.uj.ac.za/index.php/The_Thinker/article/view/3951AIMachine LearningClinical DiagnosisAfrican Healthcare
spellingShingle Edmund Terem Ugar
Challenges and Prospects of Deploying AI and Machine Learning for Clinical Diagnosis in African Healthcare
The Thinker
AI
Machine Learning
Clinical Diagnosis
African Healthcare
title Challenges and Prospects of Deploying AI and Machine Learning for Clinical Diagnosis in African Healthcare
title_full Challenges and Prospects of Deploying AI and Machine Learning for Clinical Diagnosis in African Healthcare
title_fullStr Challenges and Prospects of Deploying AI and Machine Learning for Clinical Diagnosis in African Healthcare
title_full_unstemmed Challenges and Prospects of Deploying AI and Machine Learning for Clinical Diagnosis in African Healthcare
title_short Challenges and Prospects of Deploying AI and Machine Learning for Clinical Diagnosis in African Healthcare
title_sort challenges and prospects of deploying ai and machine learning for clinical diagnosis in african healthcare
topic AI
Machine Learning
Clinical Diagnosis
African Healthcare
url https://journals.uj.ac.za/index.php/The_Thinker/article/view/3951
work_keys_str_mv AT edmundteremugar challengesandprospectsofdeployingaiandmachinelearningforclinicaldiagnosisinafricanhealthcare