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AI for Early Disease Detection: Developing models for early diagnosis of diseases like cancer or Alzheimer’s using biomarkers and imaging data

Author

Listed:
  • Abdelrahman Freek
  • Ahmed Elgalb
  • Maher Gerges

Abstract

The early detection of diseases such as cancer and Alzheimer’s is pivotal to improving patient outcomes, enhancing survival rates, and reducing healthcare costs. Traditional diagnostic methods often face challenges such as the complexity of data interpretation, variability in human expertise, and the time required for analysis. Artificial Intelligence (AI) has emerged as a transformative tool in healthcare, particularly in the domain of early disease detection. By leveraging biomarkers—biological indicators such as genetic, proteomic, and metabolic markers—and imaging data derived from advanced techniques like MRI, CT, and PET scans, AI systems can identify subtle patterns and anomalies that may indicate the onset of disease.This article explores the development and application of AI models in early diagnosis, focusing on supervised learning for disease classification, unsupervised learning for anomaly detection, and reinforcement learning for optimizing detection processes. AI’s ability to analyze complex datasets enables early identification of cancer through the detection of malignant patterns in imaging and biomarker data, and early prediction of Alzheimer’s through the analysis of brain imaging and genetic predispositions. Case studies highlight the success of AI-driven diagnostic tools in improving accuracy and reducing false positives and negatives.Despite its potential, integrating AI into clinical practice is not without challenges. Issues such as data quality and availability, ethical concerns surrounding patient privacy, regulatory compliance, and the complexity of deploying AI systems in diverse healthcare environments require careful consideration. Nevertheless, advancements in AI technologies, including multimodal learning and explainable AI, promise to address these barriers and pave the way for more effective, accessible, and personalized diagnostic systems.This article underscores the need for interdisciplinary collaboration to develop robust, ethical, and scalable AI models. By doing so, the healthcare industry can harness AI’s full potential to revolutionize early disease detection, ultimately transforming patient care and disease management.

Suggested Citation

  • Abdelrahman Freek & Ahmed Elgalb & Maher Gerges, 2024. "AI for Early Disease Detection: Developing models for early diagnosis of diseases like cancer or Alzheimer’s using biomarkers and imaging data," Journal of AI-Powered Medical Innovations (International online ISSN 3078-1930), Open Knowledge, vol. 3(1), pages 1-24.
  • Handle: RePEc:abu:abuabu:v:3:y:2024:i:1:p:1-24:id:15
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