An Innovative Artificial Intelligence–Based App for the Diagnosis of Gestational Diabetes Mellitus (GDM-AI): Development Study

BackgroundGestational diabetes mellitus (GDM) can cause adverse consequences to both mothers and their newborns. However, pregnant women living in low- and middle-income areas or countries often fail to receive early clinical interventions at local medical facilities due to r...

Full description

Bibliographic Details
Main Authors: Shen, Jiayi, Chen, Jiebin, Zheng, Zequan, Zheng, Jiabin, Liu, Zherui, Song, Jian, Wong, Sum Yi, Wang, Xiaoling, Huang, Mengqi, Fang, Po-Han, Jiang, Bangsheng, Tsang, Winghei, He, Zonglin, Liu, Taoran, Akinwunmi, Babatunde, Wang, Chi Chiu, Zhang, Casper J P, Huang, Jian, Ming, Wai-Kit
Format: Article
Language:English
Published: JMIR Publications 2020-09-01
Series:Journal of Medical Internet Research
Online Access:https://www.jmir.org/2020/9/e21573
id doaj-778e82124786435688399b7d19bf225e
record_format Article
spelling doaj-778e82124786435688399b7d19bf225e2021-04-02T18:40:46ZengJMIR PublicationsJournal of Medical Internet Research1438-88712020-09-01229e2157310.2196/21573An Innovative Artificial Intelligence–Based App for the Diagnosis of Gestational Diabetes Mellitus (GDM-AI): Development StudyShen, JiayiChen, JiebinZheng, ZequanZheng, JiabinLiu, ZheruiSong, JianWong, Sum YiWang, XiaolingHuang, MengqiFang, Po-HanJiang, BangshengTsang, WingheiHe, ZonglinLiu, TaoranAkinwunmi, BabatundeWang, Chi ChiuZhang, Casper J PHuang, JianMing, Wai-Kit BackgroundGestational diabetes mellitus (GDM) can cause adverse consequences to both mothers and their newborns. However, pregnant women living in low- and middle-income areas or countries often fail to receive early clinical interventions at local medical facilities due to restricted availability of GDM diagnosis. The outstanding performance of artificial intelligence (AI) in disease diagnosis in previous studies demonstrates its promising applications in GDM diagnosis. ObjectiveThis study aims to investigate the implementation of a well-performing AI algorithm in GDM diagnosis in a setting, which requires fewer medical equipment and staff and to establish an app based on the AI algorithm. This study also explores possible progress if our app is widely used. MethodsAn AI model that included 9 algorithms was trained on 12,304 pregnant outpatients with their consent who received a test for GDM in the obstetrics and gynecology department of the First Affiliated Hospital of Jinan University, a local hospital in South China, between November 2010 and October 2017. GDM was diagnosed according to American Diabetes Association (ADA) 2011 diagnostic criteria. Age and fasting blood glucose were chosen as critical parameters. For validation, we performed k-fold cross-validation (k=5) for the internal dataset and an external validation dataset that included 1655 cases from the Prince of Wales Hospital, the affiliated teaching hospital of the Chinese University of Hong Kong, a non-local hospital. Accuracy, sensitivity, and other criteria were calculated for each algorithm. ResultsThe areas under the receiver operating characteristic curve (AUROC) of external validation dataset for support vector machine (SVM), random forest, AdaBoost, k-nearest neighbors (kNN), naive Bayes (NB), decision tree, logistic regression (LR), eXtreme gradient boosting (XGBoost), and gradient boosting decision tree (GBDT) were 0.780, 0.657, 0.736, 0.669, 0.774, 0.614, 0.769, 0.742, and 0.757, respectively. SVM also retained high performance in other criteria. The specificity for SVM retained 100% in the external validation set with an accuracy of 88.7%. ConclusionsOur prospective and multicenter study is the first clinical study that supports the GDM diagnosis for pregnant women in resource-limited areas, using only fasting blood glucose value, patients’ age, and a smartphone connected to the internet. Our study proved that SVM can achieve accurate diagnosis with less operation cost and higher efficacy. Our study (referred to as GDM-AI study, ie, the study of AI-based diagnosis of GDM) also shows our app has a promising future in improving the quality of maternal health for pregnant women, precision medicine, and long-distance medical care. We recommend future work should expand the dataset scope and replicate the process to validate the performance of the AI algorithms.https://www.jmir.org/2020/9/e21573
collection DOAJ
language English
format Article
sources DOAJ
author Shen, Jiayi
Chen, Jiebin
Zheng, Zequan
Zheng, Jiabin
Liu, Zherui
Song, Jian
Wong, Sum Yi
Wang, Xiaoling
Huang, Mengqi
Fang, Po-Han
Jiang, Bangsheng
Tsang, Winghei
He, Zonglin
Liu, Taoran
Akinwunmi, Babatunde
Wang, Chi Chiu
Zhang, Casper J P
Huang, Jian
Ming, Wai-Kit
spellingShingle Shen, Jiayi
Chen, Jiebin
Zheng, Zequan
Zheng, Jiabin
Liu, Zherui
Song, Jian
Wong, Sum Yi
Wang, Xiaoling
Huang, Mengqi
Fang, Po-Han
Jiang, Bangsheng
Tsang, Winghei
He, Zonglin
Liu, Taoran
Akinwunmi, Babatunde
Wang, Chi Chiu
Zhang, Casper J P
Huang, Jian
Ming, Wai-Kit
An Innovative Artificial Intelligence–Based App for the Diagnosis of Gestational Diabetes Mellitus (GDM-AI): Development Study
Journal of Medical Internet Research
author_facet Shen, Jiayi
Chen, Jiebin
Zheng, Zequan
Zheng, Jiabin
Liu, Zherui
Song, Jian
Wong, Sum Yi
Wang, Xiaoling
Huang, Mengqi
Fang, Po-Han
Jiang, Bangsheng
Tsang, Winghei
He, Zonglin
Liu, Taoran
Akinwunmi, Babatunde
Wang, Chi Chiu
Zhang, Casper J P
Huang, Jian
Ming, Wai-Kit
author_sort Shen, Jiayi
title An Innovative Artificial Intelligence–Based App for the Diagnosis of Gestational Diabetes Mellitus (GDM-AI): Development Study
title_short An Innovative Artificial Intelligence–Based App for the Diagnosis of Gestational Diabetes Mellitus (GDM-AI): Development Study
title_full An Innovative Artificial Intelligence–Based App for the Diagnosis of Gestational Diabetes Mellitus (GDM-AI): Development Study
title_fullStr An Innovative Artificial Intelligence–Based App for the Diagnosis of Gestational Diabetes Mellitus (GDM-AI): Development Study
title_full_unstemmed An Innovative Artificial Intelligence–Based App for the Diagnosis of Gestational Diabetes Mellitus (GDM-AI): Development Study
title_sort innovative artificial intelligence–based app for the diagnosis of gestational diabetes mellitus (gdm-ai): development study
publisher JMIR Publications
series Journal of Medical Internet Research
issn 1438-8871
publishDate 2020-09-01
description BackgroundGestational diabetes mellitus (GDM) can cause adverse consequences to both mothers and their newborns. However, pregnant women living in low- and middle-income areas or countries often fail to receive early clinical interventions at local medical facilities due to restricted availability of GDM diagnosis. The outstanding performance of artificial intelligence (AI) in disease diagnosis in previous studies demonstrates its promising applications in GDM diagnosis. ObjectiveThis study aims to investigate the implementation of a well-performing AI algorithm in GDM diagnosis in a setting, which requires fewer medical equipment and staff and to establish an app based on the AI algorithm. This study also explores possible progress if our app is widely used. MethodsAn AI model that included 9 algorithms was trained on 12,304 pregnant outpatients with their consent who received a test for GDM in the obstetrics and gynecology department of the First Affiliated Hospital of Jinan University, a local hospital in South China, between November 2010 and October 2017. GDM was diagnosed according to American Diabetes Association (ADA) 2011 diagnostic criteria. Age and fasting blood glucose were chosen as critical parameters. For validation, we performed k-fold cross-validation (k=5) for the internal dataset and an external validation dataset that included 1655 cases from the Prince of Wales Hospital, the affiliated teaching hospital of the Chinese University of Hong Kong, a non-local hospital. Accuracy, sensitivity, and other criteria were calculated for each algorithm. ResultsThe areas under the receiver operating characteristic curve (AUROC) of external validation dataset for support vector machine (SVM), random forest, AdaBoost, k-nearest neighbors (kNN), naive Bayes (NB), decision tree, logistic regression (LR), eXtreme gradient boosting (XGBoost), and gradient boosting decision tree (GBDT) were 0.780, 0.657, 0.736, 0.669, 0.774, 0.614, 0.769, 0.742, and 0.757, respectively. SVM also retained high performance in other criteria. The specificity for SVM retained 100% in the external validation set with an accuracy of 88.7%. ConclusionsOur prospective and multicenter study is the first clinical study that supports the GDM diagnosis for pregnant women in resource-limited areas, using only fasting blood glucose value, patients’ age, and a smartphone connected to the internet. Our study proved that SVM can achieve accurate diagnosis with less operation cost and higher efficacy. Our study (referred to as GDM-AI study, ie, the study of AI-based diagnosis of GDM) also shows our app has a promising future in improving the quality of maternal health for pregnant women, precision medicine, and long-distance medical care. We recommend future work should expand the dataset scope and replicate the process to validate the performance of the AI algorithms.
url https://www.jmir.org/2020/9/e21573
work_keys_str_mv AT shenjiayi aninnovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT chenjiebin aninnovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT zhengzequan aninnovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT zhengjiabin aninnovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT liuzherui aninnovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT songjian aninnovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT wongsumyi aninnovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT wangxiaoling aninnovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT huangmengqi aninnovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT fangpohan aninnovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT jiangbangsheng aninnovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT tsangwinghei aninnovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT hezonglin aninnovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT liutaoran aninnovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT akinwunmibabatunde aninnovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT wangchichiu aninnovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT zhangcasperjp aninnovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT huangjian aninnovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT mingwaikit aninnovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT shenjiayi innovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT chenjiebin innovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT zhengzequan innovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT zhengjiabin innovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT liuzherui innovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT songjian innovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT wongsumyi innovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT wangxiaoling innovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT huangmengqi innovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT fangpohan innovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT jiangbangsheng innovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT tsangwinghei innovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT hezonglin innovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT liutaoran innovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT akinwunmibabatunde innovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT wangchichiu innovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT zhangcasperjp innovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT huangjian innovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
AT mingwaikit innovativeartificialintelligencebasedappforthediagnosisofgestationaldiabetesmellitusgdmaidevelopmentstudy
_version_ 1721551165779345408