Abdallah Shenouda, Sharifa Mouhammad, I Kh Almadhoun Mohammed Khaleel, Khawar Muhammad Muneeb, Shaikh Unzla, Balabel Khaled M, Saleh Inam, Manzoor Amima, Mandal Arun Kumar, Ekomwereren Osatohanmwen, Khine Wai Mon, Oyelaja Oluwaseyi T
Surgery, Jaber Al Ahmad Al Jaber Al Sabah Hospital, Kuwait City, KWT.
Medicine, University of Aleppo, Aleppo, SYR.
Cureus. 2023 Oct 11;15(10):e46860. doi: 10.7759/cureus.46860. eCollection 2023 Oct.
Rare genetic disorders (RDs), characterized by their low prevalence and diagnostic complexities, present significant challenges to healthcare systems. This article explores the transformative impact of artificial intelligence (AI) and machine learning (ML) in addressing these challenges. It emphasizes the need for accurate and early diagnosis of RDs, often hindered by genetic and clinical heterogeneity. This article discusses how AI and ML are reshaping healthcare, providing examples of their effectiveness in disease diagnosis, prognosis, image analysis, and drug repurposing. It highlights AI's ability to efficiently analyze extensive datasets and expedite diagnosis, showcasing case studies like Face2Gene. Furthermore, the article explores how AI tailors treatment plans for RDs, leveraging ML and deep learning (DL) to create personalized therapeutic regimens. It emphasizes AI's role in drug discovery, including the identification of potential candidates for rare disease treatments. Challenges and limitations related to AI in healthcare, including ethical, legal, technical, and human aspects, are addressed. This article underscores the importance of data ethics, privacy, and algorithmic fairness, as well as the need for standardized evaluation techniques and transparency in AI research. It highlights second-generation AI systems that prioritize patient-centric care, efficient patient recruitment for clinical trials, and the significance of high-quality data. The integration of AI with telemedicine, the growth of health databases, and the potential for personalized therapeutic recommendations are identified as promising directions for the field. In summary, this article provides a comprehensive exploration of how AI and ML are revolutionizing the diagnosis and treatment of RDs, addressing challenges while considering ethical implications in this rapidly evolving healthcare landscape.
罕见遗传病(RDs)因其患病率低和诊断复杂而给医疗系统带来了重大挑战。本文探讨了人工智能(AI)和机器学习(ML)在应对这些挑战方面的变革性影响。文章强调了对罕见遗传病进行准确和早期诊断的必要性,而这往往受到遗传和临床异质性的阻碍。本文讨论了人工智能和机器学习如何重塑医疗保健,列举了它们在疾病诊断、预后、图像分析和药物再利用方面有效性的例子。文章强调了人工智能有效分析大量数据集并加快诊断的能力,展示了如Face2Gene这样的案例研究。此外,本文还探讨了人工智能如何利用机器学习和深度学习(DL)为罕见遗传病量身定制治疗方案,以创建个性化的治疗方案。文章强调了人工智能在药物发现中的作用,包括识别罕见病治疗的潜在候选药物。文中还讨论了医疗保健领域中与人工智能相关的挑战和局限性,包括伦理、法律、技术和人为方面。本文强调了数据伦理、隐私和算法公平性的重要性,以及在人工智能研究中采用标准化评估技术和保持透明度的必要性。文章强调了以患者为中心的护理、高效的临床试验患者招募以及高质量数据的重要性的第二代人工智能系统。人工智能与远程医疗的整合、健康数据库的增长以及个性化治疗建议的潜力被确定为该领域有前景的发展方向。总之,本文全面探讨了人工智能和机器学习如何彻底改变罕见遗传病的诊断和治疗,在这个快速发展的医疗保健领域中应对挑战的同时考虑伦理影响。