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利用人工智能改善儿童健康:一个社区案例研究。

AI for Improving Children's Health: A Community Case Study.

作者信息

Ganju Aakash, Satyan Srini, Tanna Vatsal, Menezes Sonia Rebecca

机构信息

Saathealth, Mumbai, India.

出版信息

Front Artif Intell. 2021 Jan 6;3:544972. doi: 10.3389/frai.2020.544972. eCollection 2020.

DOI:10.3389/frai.2020.544972
PMID:33733204
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7944137/
Abstract

The Indian health care system lacks the infrastructure to meet the health care demands of the country. Physician and nurse availability is 30 and 50% below WHO recommendations, respectively, and has led to a steep imbalance between the demand for health care and the infrastructure available to support it. Among other concerns, India still struggles with challenges like undernutrition, with 38% of children under the age of five being underweight. Despite these challenges, technological advancements, mobile phone ubiquity and rising patient awareness offers a huge opportunity for artificial intelligence to enable efficient healthcare delivery, by improved targeting of constrained resources. The Saathealth mobile app provides low-middle income parents of young children nflwith interactive children's health, nutrition and development content in the form of an entertaining video series, a gamified quiz journey and targeted notifications. The app iteratively evolves the user journey based on dynamic data and predictive algorithms, empowering a shift from reactive to proactive care. Saathealth users have registered over 500,000 sessions and over 200 million seconds on-app engagement over a year, comparing favorably with engagement on other digital health interventions in underserved communities. We have used valuable app analytics data and insights from our 45,000 users to build scalable, predictive models that were validated for specific use cases. Using the Random Forest model with heterogeneous data allowed us to predict user churn with a 93% accuracy. Predicting user lifetimes on the mobile app for preliminary insights gave us an RMSE of 25.09 days and an R2 value of 0.91, reflecting closely correlated predictions. These predictive algorithms allow us to incentivize users with optimized offers and omni-channel nudges, to increase engagement with content as well as other targeted online and offline behaviors. The algorithms also optimize the effectiveness of our intervention by augmenting personalized experiences and directing limited health resources toward populations that are most resistant to digital first interventions. These and similar AI powered algorithms will allow us to lengthen and deepen the lifetime relationship with our health consumers, making more of them effective, proactive participants in improving children's health, nutrition and early cognitive development.

摘要

印度医疗保健系统缺乏满足该国医疗保健需求的基础设施。医生和护士的可获得性分别比世界卫生组织的建议低30%和50%,这导致了医疗保健需求与可用支持基础设施之间的严重失衡。在其他问题中,印度仍在应对营养不良等挑战,五岁以下儿童中有38%体重不足。尽管存在这些挑战,但技术进步、手机普及和患者意识提高为人工智能提供了巨大机遇,通过更好地定位有限资源来实现高效医疗保健服务。Saathealth移动应用程序以有趣的视频系列、游戏化问答之旅和有针对性的通知形式,为低收入和中等收入的幼儿父母提供互动式儿童健康、营养和发育内容。该应用程序根据动态数据和预测算法迭代优化用户体验,推动从被动护理向主动护理转变。Saathealth用户在一年时间里注册了超过50万次会话,应用内参与时长超过2亿秒,与服务不足社区的其他数字健康干预措施的参与度相比具有优势。我们利用了来自45000名用户的宝贵应用分析数据和见解,构建了可扩展的预测模型,并针对特定用例进行了验证。使用具有异构数据的随机森林模型使我们能够以93%的准确率预测用户流失。预测移动应用程序上的用户生命周期以获得初步见解,我们得到的均方根误差为25.09天,R2值为0.91,反映出预测相关性很高。这些预测算法使我们能够通过优化优惠和全渠道推送来激励用户,以增加对内容以及其他有针对性的在线和离线行为的参与度。这些算法还通过增强个性化体验并将有限的医疗资源导向最抗拒数字优先干预措施的人群,来优化我们干预措施的效果。这些以及类似的人工智能驱动算法将使我们能够延长并深化与健康消费者的长期关系,使更多人成为改善儿童健康、营养和早期认知发展的有效、积极参与者。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a67b/7944137/c4b486a3647c/frai-03-544972-g004.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a67b/7944137/01a9b935300c/frai-03-544972-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a67b/7944137/d054dac2cb05/frai-03-544972-g002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a67b/7944137/82663131f6c5/frai-03-544972-g003.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a67b/7944137/c4b486a3647c/frai-03-544972-g004.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a67b/7944137/01a9b935300c/frai-03-544972-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a67b/7944137/d054dac2cb05/frai-03-544972-g002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a67b/7944137/82663131f6c5/frai-03-544972-g003.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a67b/7944137/c4b486a3647c/frai-03-544972-g004.jpg

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