Literature DB >> 30742121

Evaluation and accurate diagnoses of pediatric diseases using artificial intelligence.

Huiying Liang1, Brian Y Tsui2, Hao Ni3, Carolina C S Valentim4, Sally L Baxter2, Guangjian Liu1, Wenjia Cai2, Daniel S Kermany1,2, Xin Sun1, Jiancong Chen2, Liya He1, Jie Zhu1, Pin Tian2, Hua Shao2, Lianghong Zheng5,6, Rui Hou5,6, Sierra Hewett1,2, Gen Li1,2, Ping Liang3, Xuan Zang3, Zhiqi Zhang3, Liyan Pan1, Huimin Cai5,6, Rujuan Ling1, Shuhua Li1, Yongwang Cui1, Shusheng Tang1, Hong Ye1, Xiaoyan Huang1, Waner He1, Wenqing Liang1, Qing Zhang1, Jianmin Jiang1, Wei Yu1, Jianqun Gao1, Wanxing Ou1, Yingmin Deng1, Qiaozhen Hou1, Bei Wang1, Cuichan Yao1, Yan Liang1, Shu Zhang1, Yaou Duan2, Runze Zhang2, Sarah Gibson2, Charlotte L Zhang2, Oulan Li2, Edward D Zhang2, Gabriel Karin2, Nathan Nguyen2, Xiaokang Wu1,2, Cindy Wen2, Jie Xu2, Wenqin Xu2, Bochu Wang2, Winston Wang2, Jing Li1,2, Bianca Pizzato2, Caroline Bao2, Daoman Xiang1, Wanting He1,2, Suiqin He2, Yugui Zhou1,2, Weldon Haw2,7, Michael Goldbaum2, Adriana Tremoulet2, Chun-Nan Hsu2, Hannah Carter2, Long Zhu3, Kang Zhang8,9,10, Huimin Xia11.   

Abstract

Artificial intelligence (AI)-based methods have emerged as powerful tools to transform medical care. Although machine learning classifiers (MLCs) have already demonstrated strong performance in image-based diagnoses, analysis of diverse and massive electronic health record (EHR) data remains challenging. Here, we show that MLCs can query EHRs in a manner similar to the hypothetico-deductive reasoning used by physicians and unearth associations that previous statistical methods have not found. Our model applies an automated natural language processing system using deep learning techniques to extract clinically relevant information from EHRs. In total, 101.6 million data points from 1,362,559 pediatric patient visits presenting to a major referral center were analyzed to train and validate the framework. Our model demonstrates high diagnostic accuracy across multiple organ systems and is comparable to experienced pediatricians in diagnosing common childhood diseases. Our study provides a proof of concept for implementing an AI-based system as a means to aid physicians in tackling large amounts of data, augmenting diagnostic evaluations, and to provide clinical decision support in cases of diagnostic uncertainty or complexity. Although this impact may be most evident in areas where healthcare providers are in relative shortage, the benefits of such an AI system are likely to be universal.

Entities:  

Mesh:

Year:  2019        PMID: 30742121     DOI: 10.1038/s41591-018-0335-9

Source DB:  PubMed          Journal:  Nat Med        ISSN: 1078-8956            Impact factor:   53.440


  93 in total

1.  Artificial Intelligence Screening for Diabetic Retinopathy: the Real-World Emerging Application.

Authors:  Valentina Bellemo; Gilbert Lim; Tyler Hyungtaek Rim; Gavin S W Tan; Carol Y Cheung; SriniVas Sadda; Ming-Guang He; Adnan Tufail; Mong Li Lee; Wynne Hsu; Daniel Shu Wei Ting
Journal:  Curr Diab Rep       Date:  2019-07-31       Impact factor: 4.810

2.  Will China lead the world in AI by 2030?

Authors:  Sarah O'Meara
Journal:  Nature       Date:  2019-08       Impact factor: 49.962

3.  The Socrates Project for Difficult Diagnosis at Northwestern Medicine.

Authors:  Benjamin D Singer; Alexandra M Goodwin; Anand A Patel; Douglas E Vaughan
Journal:  J Hosp Med       Date:  2019-11-20       Impact factor: 2.960

4.  Artificial intelligence computed tomography helps evaluate the severity of COVID-19 patients: A retrospective study.

Authors:  Yi Han; Su-Cheng Mu; Hai-Dong Zhang; Wei Wei; Xing-Yue Wu; Chao-Yuan Jin; Guo-Rong Gu; Bao-Jun Xie; Chao-Yang Tong
Journal:  World J Emerg Med       Date:  2022

5.  Natural Language Processing Applications in the Clinical Neurosciences: A Machine Learning Augmented Systematic Review.

Authors:  Quinlan D Buchlak; Nazanin Esmaili; Christine Bennett; Farrokh Farrokhi
Journal:  Acta Neurochir Suppl       Date:  2022

6.  Gender-sensitive word embeddings for healthcare.

Authors:  Shunit Agmon; Plia Gillis; Eric Horvitz; Kira Radinsky
Journal:  J Am Med Inform Assoc       Date:  2022-01-29       Impact factor: 4.497

7.  Automatized Hepatic Tumor Volume Analysis of Neuroendocrine Liver Metastases by Gd-EOB MRI-A Deep-Learning Model to Support Multidisciplinary Cancer Conference Decision-Making.

Authors:  Uli Fehrenbach; Siyi Xin; Alexander Hartenstein; Timo Alexander Auer; Franziska Dräger; Konrad Froböse; Henning Jann; Martina Mogl; Holger Amthauer; Dominik Geisel; Timm Denecke; Bertram Wiedenmann; Tobias Penzkofer
Journal:  Cancers (Basel)       Date:  2021-05-31       Impact factor: 6.639

8.  Development and validation of a machine learning algorithm for predicting the risk of postpartum depression among pregnant women.

Authors:  Yiye Zhang; Shuojia Wang; Alison Hermann; Rochelle Joly; Jyotishman Pathak
Journal:  J Affect Disord       Date:  2020-09-30       Impact factor: 4.839

9.  High Cotinine and Healthcare Utilization Disparities Among Low-Income Children.

Authors:  Ashley L Merianos; Roman A Jandarov; E Melinda Mahabee-Gittens
Journal:  Am J Prev Med       Date:  2020-10-29       Impact factor: 5.043

Review 10.  Current applications of artificial intelligence combined with urine detection in disease diagnosis and treatment.

Authors:  Jun Tan; Feng Qin; Jiuhong Yuan
Journal:  Transl Androl Urol       Date:  2021-04
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