Use of AI in Diagnostic Imaging and Future Prospects.

IF 1.5 Q2 MEDICINE, GENERAL & INTERNAL
JMA journal Pub Date : 2025-01-15 Epub Date: 2024-10-08 DOI:10.31662/jmaj.2024-0169
Norikatsu Miyoshi
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Abstract

Introduction: The integration of artificial intelligence (AI) into medical practices has transformed fields like gastroenterological surgery. AI predicts patient prognoses using clinical and pathological data and develops technologies that create three-dimensional (3D) models for surgical simulations, thereby enhancing surgical precision and care quality.

Methods: At our facility, AI-driven diagnostic and treatment systems have been developed under the "Strategic Innovation Creation Program" by the Cabinet Office. Our research focuses on perioperative care by constructing 3D models from preoperative imaging data to develop surgical support systems for preoperative simulations and navigation during surgery. Additionally, we use deep learning to predict disease progression and complications and natural language processing to analyze electronic medical records to predict postoperative complications.

Results: AI-based surgical support systems effectively convert two-dimensional imaging data into 3D models, thereby improving surgical precision. Predictive models for disease progression and complications developed using deep learning have high accuracy. AI applications in diagnostic imaging enable early detection and improved treatment planning. AI-based tools for informed consent and patient support enhance patient understanding and satisfaction.

Conclusions: AI revolutionizes medical practices by improving diagnostic accuracy, surgical precision, and patient outcomes. Future projects will integrate remote diagnostic and treatment planning; leverage AI for comprehensive, high-quality care; and support work-style reforms for healthcare professionals. Advancements in AI will overcome current medical challenges and enhance the communication between physicians and patients.

人工智能在诊断成像中的应用及其未来展望。
导读:人工智能(AI)与医疗实践的整合已经改变了胃肠外科等领域。人工智能利用临床和病理数据预测患者预后,并开发出用于手术模拟的三维(3D)模型技术,从而提高手术精度和护理质量。方法:在我们的设施,人工智能驱动的诊断和治疗系统是在内阁府的“战略创新创造计划”下开发的。我们的研究重点是围手术期护理,通过术前成像数据构建3D模型来开发手术支持系统,用于术前模拟和术中导航。此外,我们使用深度学习来预测疾病进展和并发症,并使用自然语言处理来分析电子病历以预测术后并发症。结果:基于人工智能的手术支持系统有效地将二维成像数据转换为三维模型,从而提高手术精度。使用深度学习开发的疾病进展和并发症预测模型具有很高的准确性。人工智能在诊断成像中的应用可以实现早期发现和改进治疗计划。基于人工智能的知情同意和患者支持工具提高了患者的理解和满意度。结论:人工智能通过提高诊断准确性、手术精度和患者预后,彻底改变了医疗实践。未来的项目将整合远程诊断和治疗计划;利用人工智能提供全面、高质量的护理;支持医疗保健专业人员的工作方式改革。人工智能的进步将克服当前的医疗挑战,并加强医生和患者之间的沟通。
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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