Revolutionizing Healthcare: How Machine Learning is Transforming Patient Diagnoses - a Comprehensive Review of AI's Impact on Medical Diagnosis

IF 2.1
Ahmad Yousaf Gill, Ayesha Saeed, Saad Rasool, Ali Husnain, Hafiz Khawar Hussain
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Abstract

The integration of machine learning into healthcare heralds a new era where the convergence of technology and human compassion reshapes the very essence of healing. This monumental shift transcends mere technological advancement; it represents a profound evolution in patient care. By unraveling intricate patterns within medical data, machine learning empowers healthcare professionals with early disease detection and precise risk assessment, augmenting human intuition rather than replacing it. This synergy between AI-driven insights and human expertise has led to remarkable achievements, from redefining radiological interpretations to foreseeing infectious disease outbreaks, painting a future where healthcare is not only precise but profoundly patient-centered. Yet, amidst these groundbreaking advancements, ethical considerations stand as pillars guiding responsible innovation. Upholding patient autonomy, ensuring data privacy, and addressing algorithmic bias are essential to maintain trust and integrity. As we navigate this transformative path, the promise of a healthcare landscape where healing becomes a symphony of technology and tradition becomes evident. It is a future where the well-being and hopes of millions are at the core, promising a brighter, more compassionate tomorrow for healthcare, where every diagnosis, treatment, and act of care resonates with the harmony of human expertise and technological marvels.
医疗保健革命:机器学习如何改变患者诊断-人工智能对医疗诊断影响的全面回顾
机器学习与医疗保健的融合预示着一个新时代的到来,在这个时代,技术和人类同情心的融合重塑了治疗的本质。这一重大转变不仅仅是技术进步;它代表了病人护理的深刻演变。通过揭示医疗数据中的复杂模式,机器学习使医疗保健专业人员能够进行早期疾病检测和精确的风险评估,增强而不是取代人类的直觉。人工智能驱动的见解与人类专业知识之间的协同作用带来了非凡的成就,从重新定义放射学解释到预测传染病爆发,描绘了一个医疗保健不仅精确而且以患者为中心的未来。然而,在这些突破性的进步中,道德考虑是指导负责任创新的支柱。维护患者自主权、确保数据隐私和解决算法偏见对于维护信任和诚信至关重要。当我们在这条变革的道路上航行时,医疗保健领域的前景变得明显,在这里,治疗成为技术和传统的交响乐。这是一个以数百万人的福祉和希望为核心的未来,承诺为医疗保健提供一个更光明、更富有同情心的明天,在那里,每一个诊断、治疗和护理行为都与人类专业知识和技术奇迹的和谐相呼应。
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来源期刊
World Journal of Science Technology and Sustainable Development
World Journal of Science Technology and Sustainable Development GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY-
CiteScore
5.50
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