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Profile Details
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USD 75 /hr
Hire Aondona I.
Nigeria
USD 75 /hr

Medical AI & Deep Learning Consultant | Medical Image Segmentation & Reconstruction | 19+ Publications

Profile Summary
Subject Matter Expertise
Services
Writing Medical Writing, Technical Writing, Creative Writing
Research Scientific and Technical Research, Systematic Literature Review
Consulting Healthcare Consulting, Scientific and Technical Consulting
Data & AI Predictive Modeling, Statistical Analysis, Image Processing, Image Analysis, Algorithm Design-ML, Data Visualization, Data Cleaning, Data Processing
Work Experience

Research Assistant

Medical Artificial Intelligence Laboratory (MAI Lab)

February 2025 - Present

Research Programme Manager

SPARK Academy (pan-African medical AI training programme)

February 2024 - Present

Education

MSc (Medical Physics)

University of Lagos

November 2024 - September 2025

B.Tech (Physics)

Federal University of Technology Minna

October 2016 - July 2023

Certifications
  • Practical MR Physics for Clinicians

    ESMRMB (European Society for Magnetic Resonance in Medicine and Biology)

    September 2025 - Present

  • MedICSS Summer School Medical Image Computing

    University College London (UCL)

    February 2024 - Present

  • McMedHacks Medical Image Analysis

    McGill University

    August 2023 - Present

Publications
BOOK CHAPTER
Aondona Iorumbur, Lesly Tsoptio Fougang, Joseph Muthui Wacira, Amal Jlassi, Dong Zhang, Confidence Raymond (2026). A Self-Supervised Framework for Glioma Segmentation Using Swin UNETR .
Abba Mohammed, Zulyadaini Muhammad Aminu, Ummulkhairi Ibrahim, Amina Suleiman Damo, Theodore Barfoot, Alexander Hammers, Raymond Confidence, Aondona Iorumbar, Abdulrazaq Zubair, Mubaraq Yakubu (2026). BRAIN-CATS: Brain Tumour Reliability-Aware Imaging with Neural Networks Using Calibration-Aware Training and Segmentation .
Aondona Iorumbur, Willem P. E. Boonzaier, Farhana Moosa, Kagiso Lebang, Hanifa Jabaar, Dong Zhang, Confidence Raymond (2026). Domain Adaptation for Adult Glioma Segmentation in Sub-Saharan Africa: An Ensemble of nnU-Net v2 and MedNeXt .
Aondona Iorumbur, Freedmore Sidume, Nkuebe Clement Moleko, Botsile Gorata Masalela, Preference Mangwayana, Lame Kaisara, Refilwe Goitsemang, Topo Lefika Rapula, Dong Zhang, Confidence Raymond (2026). LiMSA-UNet: A Lightweight Modality-Selective Attention ResUNet for Brain-Tumor Segmentation .
JOURNAL ARTICLE
Adaobi Emegoakor, Confidence Raymond, Yewande Gbadamosi, Richard Malumba, Charity Umoren, Diana Spence Betancourt, Aondona M. Iorumbur, Chinasa Kalaiwo, Abbas Rabiu Muhammad, Dennis Musinguzi, et al. (2026). Bridging the Gap: A Community Driven and AI-Enabled Approach to Early Breast Cancer Detection in Black African Women . Lecture Notes in Computer Science.
PREPRINT
Ayomide Oladele, Raymond Confidence, Dong Zhang, Charity Umoren, Aondana M Iorumbur, Anu Gbadamosi, Farouk Dako, Maruf Adewole, Udunna Anazodo (2025). Lightweight Brain Tumor Segmentation on Low-Resource Systems: A Step-by-Step Guide with 3D U-Net v2 .
CONFERENCE PAPER
Ilerioluwakiiye Abolade, Aniekan Udo, Augustine Ojo, Abdulbasit Oyetunji, Hammed Ajigbotosho, Aondana Iorumbur, Confidence Raymond, Maruf Adewole(2025). Domain-Adaptive Transformer for Data-Efficient Glioma Segmentation in Sub-Saharan MRI . arXiv
Claudia Takyi Ankomah, Livingstone Eli Ayivor, Ireneaus Nyame, Leslie Wambo, Patrick Yeboah Bonsu, Aondona Moses Iorumbur, Raymond Confidence, Toufiq Musah(2025). How We Won BraTS-SSA 2025: Brain Tumor Segmentation in the Sub-Saharan African Population Using Segmentation-Aware Data Augmentation and Model Ensembling . arXiv