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

机译:基于创新的人工智能诊断妊娠期糖尿病(GDM-AI):发展研究

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Background Gestational 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. Objective This 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. Methods An 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. Results The 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%. Conclusions Our 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.
机译:背景技术妊娠期糖尿病Mellitus(GDM)会对母亲及其新生儿造成不良影响。然而,由于限制GDM诊断,居住在低收入和中等收入地区或国家或国家的孕妇往往未能在当地医疗设施中获得早期临床干预措施。以前研究中疾病诊断中的人工智能(AI)的出色表现证明了其在GDM诊断中的有前途的应用。目的本研究旨在调查在GDM诊断中进行良好的次级AI算法的实施,该设置需要较少的医疗设备和工作人员,并根据AI算法建立应用程序。如果我们的应用广泛使用,本研究还探讨了可能的进展。方法方法,其中包括9种算法的AI模型在12,304名孕期遗址上培训,他们同意,他们在2010年11月和10月期间接受了济南大学第一家地方医院的妇产科妇产科妇科妇科的考试2017.根据美国糖尿病协会(ADA)2011年诊断标准诊断出GDM。选择年龄和空腹血糖作为关键参数。对于验证,我们对内部数据集进行了k倍交叉验证(k = 5),以及包括香港附属教学院威尔士医院威尔士王子医院的1655例,其中一个非验证 - 洛卡医院。为每种算法计算精度,灵敏度和其他标准。结果支持向量机(SVM)的外部验证数据集(SVM),随机林,adaboost,k最近邻居(knn),naive bayes(nb),决策树,逻辑回归(lr ),极端梯度升压(XGBoost)和梯度升压决策树(GBDT)分别为0.780,0.657,0.736,0.669,0.774,0.614,0.769,0.742和0.757。 SVM还在其他标准中保留了高性能。 SVM的特异性在外部验证集中保留了100%,精度为88.7%。结论我们的前瞻性和多中心研究是第一次支持资源有限地区孕妇GDM诊断的临床研究,仅使用空腹血糖价值,患者年龄和与互联网连接的智能手机。我们的研究证明,SVM可以通过较少的操作成本和更高的疗效来实现精确的诊断。我们的研究(简称GDM-AI研究,即对GDM的基于AI的诊断)也显示了我们的应用程序在提高孕妇,精密医学和长途医学的母体健康质量方面有一个有希望的未来关心。我们建议我们将来的工作应扩展数据集范围并复制过程以验证AI算法的性能。

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