Innovative Artificial Intelligence System in the Children's Hospital in Japan.

IF 1.5 Q2 MEDICINE, GENERAL & INTERNAL
JMA journal Pub Date : 2025-04-28 Epub Date: 2025-02-21 DOI:10.31662/jmaj.2024-0312
Akihiro Umezawa, Kazuaki Nakamura, Mureo Kasahara, Takashi Igarashi
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Abstract

The evolution of innovative artificial intelligence (AI) systems in pediatric hospitals in Japan promises benefits for patients and healthcare providers. We actively contribute to advancements in groundbreaking medical treatments by leveraging deep learning technology and using vast medical datasets. Our team of data scientists closely collaborates with departments within the hospital. Our research themes based on deep learning are wide-ranging, including acceleration of pathological diagnosis using image data, distinguishing of bacterial species, early detection of eye diseases, and prediction of genetic disorders from physical features. Furthermore, we implement Information and Communication Technology to diagnose pediatric cancer. Moreover, we predict immune responses based on genomic data and diagnose autism by quantifying behavior and communication. Our expertise extends beyond research to provide comprehensive AI development services, including data collection, annotation, high-speed computing, utilization of machine learning frameworks, design of web services, and containerization. In addition, as active members of medical AI platform collaboration partnerships, we provide unique data and analytical technologies to facilitate the development of AI development platforms. Furthermore, we address the challenges of securing medical data in the cloud to ensure compliance with stringent confidentiality standards. We will discuss AI's advancements in pediatric hospitals and their challenges.

日本儿童医院的创新人工智能系统。
日本儿科医院创新人工智能(AI)系统的发展有望为患者和医疗保健提供者带来好处。通过利用深度学习技术和使用庞大的医疗数据集,我们积极为突破性医学治疗的进步做出贡献。我们的数据科学家团队与医院内的部门密切合作。我们基于深度学习的研究主题非常广泛,包括使用图像数据加速病理诊断,区分细菌种类,早期发现眼病,以及从身体特征预测遗传疾病。此外,我们实施信息和通信技术来诊断儿童癌症。此外,我们基于基因组数据预测免疫反应,并通过量化行为和交流来诊断自闭症。我们的专业知识不仅限于研究,还提供全面的人工智能开发服务,包括数据收集、注释、高速计算、机器学习框架的利用、web服务的设计和容器化。此外,作为医疗人工智能平台协作伙伴关系的积极成员,我们提供独特的数据和分析技术,以促进人工智能开发平台的发展。此外,我们还解决了在云中保护医疗数据的挑战,以确保遵守严格的保密标准。我们将讨论人工智能在儿科医院的进展及其面临的挑战。
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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