MAIA (Medical Artificial Intelligence Assistant,医疗人工智能助手)作为癌症医疗一体化新平台的接口。

L. Pino, Eduardo Large, J. Mejía, I. Triana
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引用次数: 3

摘要

25背景:癌症卫生保健系统是低收入和中等收入国家不公平和浪费的一个例子。获得以早期诊断、分子生物学、适当分期和循证治疗为重点的高质量癌症途径是稀缺的,在大多数情况下,患者的护理经历是戏剧性的和困难的。目前还没有一种基于新技术的综合医疗模式,可以改善治疗效果,使患者和医生在癌症治疗过程中更舒适、更快捷。方法:我们的团队开发并训练了一个名为MAIA(医疗人工智能助手)的聊天机器人,使用一种算法翻译医学语言,专注于非小细胞肺癌的最新进展。我们的临床团队在诊断、分期、将医疗和外科治疗以及分子生物学整合到虚拟平台中,然后使用神经网络集成到狭窄的人工智能机器人大脑中,并建议为医生提供临床支持,并使用肿瘤咨询中捕获的口头信息创建标准文本,并通过图像编辑软件集成图像(报告),然后由医生创建独特的医疗记录,而无需使用计算机。MAIA还可以在一线治疗中创建医疗选择,并通过自己的应用程序(MAIA Hip)创建警报和警报。结果:我们的概念证明以视频形式发布在此链接https://drive.google.com/file/d/12YtiOkhfEmIsL2bFp9T3QyfHHWxBvvKU/view?ts=5ceec096由于我们的决策树的大小,我们无法上传它们,但可以用于演示。结论:通过使用神经网络方法和其他软件工具,通过临床和工程语言的集成,可以将聊天机器人训练成一个用于综合癌症医疗平台(HIP)的狭窄人工智能接口。目前,MAIA改善了患者和医生的体验,但真正的影响将是数据标准化和高级分析的获取。MAIA HIP的最终范围将是低收入和中等收入国家的癌症基金。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MAIA (Medical Artificial Intelligence Assistant) as interface for a new cancer healthcare integrative platform.
25 Background: Cancer healthcare systems are an example of inequity and waste in low and middle income countries. Access to high quality cancer pathways focused in early diagnosis, molecular biology, proper staging and evidence based treatments are scarce and the patient`s care experience is dramatic and difficult in a majority of cases. There are no integrative healthcare models based on new technologies that improve outcomes and make more comfortable and expeditious all the patient and physician´s journey in cancer. Methods: Our team developed and trained a talkbot called MAIA (Medical Artificial Intelligence Assistant) using an algorithmic translation of medical language focused in the state or art for non small cell lung cancer. Our clinical team developed decision trees in diagnosis, staging, medical and surgical treatment and molecular biology that were incorporated in a virtual platform and then integrated onto a narrow artificial intelligence bot brain using neural networks with the proposal of generate clinical support to the physician and create a standard text using the verbal information captured in the oncological consultation and integrated images (reports) through a image edition software and then create a unique medical record without using computers by the physician. MAIA also can create medical treatment choices in first line of treatment and create alerts and alarms through an own app (MAIA Hip). Results: Our proof of concept was released in video at this link https://drive.google.com/file/d/12YtiOkhfEmIsL2bFp9T3QyfHHWxBvvKU/view?ts=5ceec096 Due to our decision trees size we can´t upload them, but are available for presentation. Conclusions: A talkbot trained as a narrow artificial intelligence interface for an integrative cancer healthcare platform (HIP) is possible through the clinical and engineer integration of languages using a neural network method and other software tools. MAIA is for now a patient and physician experience improvement, but the real impact will be in the data standarization and acquisition for advanced analytics. The final scope of MAIA HIP will be a blockchain for cancer in low and middle income countries.
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来源期刊
自引率
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审稿时长
20 weeks
期刊介绍: The Journal of Global Oncology (JGO) is an online only, open access journal focused on cancer care, research and care delivery issues unique to countries and settings with limited healthcare resources. JGO aims to provide a home for high-quality literature that fulfills a growing need for content describing the array of challenges health care professionals in resource-constrained settings face. Article types include original reports, review articles, commentaries, correspondence/replies, special articles and editorials.
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