Kwame Nkrumah University of Science and Technology
237 publications · 246 citations · ORCID 0000-0001-6244-2582
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Why this gap exists: While abstracts [4], [7], [8], and [9] discuss digital tools and maternity care in low- and middle-income countries, none provide a direct comparative effectiveness analysis of telemedicine versus in-person care regarding maternal mortality during health system shocks, leaving the specific question unresolved.
Sources
Why this gap exists: While the retrieved literature confirms associations between socioeconomic disadvantage, maternal stress, and infant neurodevelopment, it does not resolve the specific question of how longitudinal trajectories of maternal stress and resilience mediate these associations, as the studies focus on broad correlations or static measures rather than dynamic mediation pathways.
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Why this gap exists: While a 2023 network meta-analysis [6] synthesizes general efficacy and adherence data for LTBI regimens, the retrieved evidence lacks direct comparative studies specifically focused on high-burden, low-resource settings, leaving the specific constraints of these environments unresolved.
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Why this gap exists: While the retrieved literature establishes links between female education, political power, and health outcomes (e.g., [3], [6], [9]), no study directly addresses how specific labor or education policy interventions accelerate the 'maternal mortality transition' in high-mortality regions, leaving the mechanism and impact of such specific policies unresolved.
Sources
Why this gap exists: While the retrieved papers confirm that anti-nutritional factors like phytates and trypsin inhibitors reduce mineral bioavailability [0, 2], they focus on general adult health or crop improvement [1, 6] and do not provide direct evidence on the specific growth outcomes in children relying on these proteins as primary staples.
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Wavelet‐Based Feature Extraction for Efficient High‐Resolution Image Classification
Engineering Reports · 2025 · 13 citations
Deep learning for efficient high-resolution image processing: A systematic review
Intelligent Systems with Applications · 2025 · 10 citations
Diversity in Stable GANs: A Systematic Review of Mode Collapse Mitigation Strategies
Engineering Reports · 2025 · 10 citations
Communications in computer and information science · 2025 · 7 citations
African Journal of Economic and Management Studies · 2025 · 6 citations
Engineering Reports · 2025 · 3 citations
Applied Research · 2025
Level of Awareness of Industrialised Building Systems (IBS) in The Ghanaian Construction Industry
African Journal Of Applied Research · 2024 · 3 citations
arXiv (Cornell University) · 2024
Oral Presentations · 2024
Cost-Effectiveness Analysis of Myopia Progression Interventions in Children
JAMA Network Open · 2023 · 73 citations
Computer Methods and Programs in Biomedicine · 2023 · 21 citations
Semi-Supervised Segmentation Framework for Gastrointestinal Lesion Diagnosis in Endoscopic Images
Journal of Personalized Medicine · 2023 · 6 citations
Early esophagus cancer segmentation from gastrointestinal endoscopic images based on U-Net++ model
Journal of Electronic Science and Technology · 2023 · 3 citations
Examining the effect of synthetic data augmentation in polyp detection and segmentation
International Journal of Computer Assisted Radiology and Surgery · 2022 · 18 citations
A study on endoscopy artefact detection based on deep learning
Research Square · 2022 · 1 citations
A study on endoscopy artefact detection based on deep learning
Research Square · 2022
Supervised contrastive learning for gastrointestinal lesions classification in endoscopic images
International Conference on Biomedical and Intelligent Systems (IC-BIS 2022) · 2022
Applied Sciences · 2021 · 62 citations
Detection of Cracks in Crankshaft Using an Intelligent Audible Sound-Based Non-Destructive Method
2021 Asian Conference on Innovation in Technology (ASIANCON) · 2021 · 1 citations
GAN-Based Synthetic Gastrointestinal Image Generation
2020 · 4 citations
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