Revolutionizing Radiology With Artificial Intelligence.

IF 1 Q3 MEDICINE, GENERAL & INTERNAL Cureus Pub Date : 2024-10-29 eCollection Date: 2024-10-01 DOI:10.7759/cureus.72646
Abhiyan Bhandari
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Abstract

Artificial intelligence (AI) is rapidly transforming the field of radiology, offering significant advancements in diagnostic accuracy, workflow efficiency, and patient care. This article explores AI's impact on various subfields of radiology, emphasizing its potential to improve clinical practices and enhance patient outcomes. AI-driven technologies such as machine learning, deep learning, and natural language processing (NLP) are playing a pivotal role in automating routine tasks, aiding in early disease detection, and supporting clinical decision-making, allowing radiologists to focus on more complex diagnostic challenges. Key applications of AI in radiology include improving image analysis through computer-aided diagnosis (CAD) systems, which enhance the detection of abnormalities in imaging, such as tumors. AI tools have demonstrated high accuracy in analyzing medical images, integrating data from multiple imaging modalities such as CT, MRI, and PET to provide comprehensive diagnostic insights. These advancements facilitate personalized treatment planning and complement radiologists' workflows. However, for AI to be fully integrated into radiology workflows, several challenges must be addressed, including ensuring transparency in how AI algorithms work, protecting patient data, and avoiding biases that could affect diverse populations. Developing explainable AI systems that can clearly show how decisions are made is crucial, as is ensuring AI tools can seamlessly fit into existing radiology systems. Collaboration between radiologists, AI developers, and policymakers, alongside strong ethical guidelines and regulatory oversight, will be key to ensuring AI is implemented safely and effectively in clinical practice. Overall, AI holds tremendous promise in revolutionizing radiology. Through its ability to automate complex tasks, enhance diagnostic capabilities, and streamline workflows, AI has the potential to significantly improve the quality and efficiency of radiology practices. Continued research, development, and collaboration will be crucial in unlocking AI's full potential and addressing the challenges that accompany its adoption.

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用人工智能革新放射学。
人工智能(AI)正在迅速改变放射学领域,在诊断准确性、工作流程效率和患者护理方面取得了显著进步。本文探讨了人工智能对放射学各子领域的影响,强调了其改善临床实践和提高患者疗效的潜力。机器学习、深度学习和自然语言处理(NLP)等人工智能驱动的技术在实现常规任务自动化、协助早期疾病检测和支持临床决策方面发挥着举足轻重的作用,使放射科医生能够专注于更复杂的诊断挑战。人工智能在放射学中的主要应用包括通过计算机辅助诊断(CAD)系统改进图像分析,从而提高对肿瘤等异常图像的检测能力。人工智能工具在分析医学影像方面表现出很高的准确性,可整合 CT、MRI 和 PET 等多种成像模式的数据,提供全面的诊断见解。这些进步促进了个性化治疗规划,并对放射科医生的工作流程起到了补充作用。然而,要将人工智能完全融入放射学工作流程,必须解决几个难题,包括确保人工智能算法工作方式的透明度、保护患者数据以及避免可能影响不同人群的偏见。开发可解释的人工智能系统,清楚地展示决策是如何做出的至关重要,确保人工智能工具能无缝地融入现有的放射学系统也同样重要。放射科医生、人工智能开发人员和政策制定者之间的合作,以及强有力的道德准则和监管监督,将是确保人工智能在临床实践中安全有效实施的关键。总之,人工智能在彻底改变放射学方面大有可为。通过自动化复杂任务、增强诊断能力和简化工作流程的能力,人工智能有可能显著提高放射学实践的质量和效率。持续的研究、开发和合作对于释放人工智能的全部潜能和应对采用人工智能所带来的挑战至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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