Establish a normal fetal lung gestational age grading model and explore the potential value of deep

来源 :中华医学杂志英文版 | 被引量 : 0次 | 上传用户:charleshuangjing
下载到本地 , 更方便阅读
声明 : 本文档内容版权归属内容提供方 , 如果您对本文有版权争议 , 可与客服联系进行内容授权或下架
论文部分内容阅读
Background::Prenatal evaluation of fetal lung maturity (FLM) is a challenge, and an effective non-invasive method for prenatal assessment of FLM is needed. The study aimed to establish a normal fetal lung gestational age (GA) grading model based on deep learning (DL) algorithms, validate the effectiveness of the model, and explore the potential value of DL algorithms in assessing FLM.Methods::A total of 7013 ultrasound images obtained from 1023 normal pregnancies between 20 and 41 + 6 weeks were analyzed in this study. There were no pregnancy-related complications that affected fetal lung development, and all infants were born without neonatal respiratory diseases. The images were divided into three classes based on the gestational week: class I: 20 to 29 + 6 weeks, class II: 30 to 36 + 6 weeks, and class III: 37 to 41 + 6 weeks. There were 3323, 2142, and 1548 images in each class, respectively. First, we performed a pre-processing algorithm to remove irrelevant information from each image. Then, a convolutional neural network was designed to identify different categories of fetal lung ultrasound images. Finally, we used ten-fold cross-validation to validate the performance of our model. This new machine learning algorithm automatically extracted and classified lung ultrasound image information related to GA. This was used to establish a grading model. The performance of the grading model was assessed using accuracy, sensitivity, specificity, and receiver operating characteristic curves.Results::A normal fetal lung GA grading model was established and validated. The sensitivity of each class in the independent test set was 91.7%, 69.8%, and 86.4%, respectively. The specificity of each class in the independent test set was 76.8%, 90.0%, and 83.1%, respectively. The total accuracy was 83.8%. The area under the curve (AUC) of each class was 0.982, 0.907, and 0.960, respectively. The micro-average AUC was 0.957, and the macro-average AUC was 0.949.Conclusions::The normal fetal lung GA grading model could accurately identify ultrasound images of the fetal lung at different GAs, which can be used to identify cases of abnormal lung development due to gestational diseases and evaluate lung maturity after antenatal corticosteroid therapy. The results indicate that DL algorithms can be used as a non-invasive method to predict FLM.“,”Background::Prenatal evaluation of fetal lung maturity (FLM) is a challenge, and an effective non-invasive method for prenatal assessment of FLM is needed. The study aimed to establish a normal fetal lung gestational age (GA) grading model based on deep learning (DL) algorithms, validate the effectiveness of the model, and explore the potential value of DL algorithms in assessing FLM.Methods::A total of 7013 ultrasound images obtained from 1023 normal pregnancies between 20 and 41 + 6 weeks were analyzed in this study. There were no pregnancy-related complications that affected fetal lung development, and all infants were born without neonatal respiratory diseases. The images were divided into three classes based on the gestational week: class I: 20 to 29 + 6 weeks, class II: 30 to 36 + 6 weeks, and class III: 37 to 41 + 6 weeks. There were 3323, 2142, and 1548 images in each class, respectively. First, we performed a pre-processing algorithm to remove irrelevant information from each image. Then, a convolutional neural network was designed to identify different categories of fetal lung ultrasound images. Finally, we used ten-fold cross-validation to validate the performance of our model. This new machine learning algorithm automatically extracted and classified lung ultrasound image information related to GA. This was used to establish a grading model. The performance of the grading model was assessed using accuracy, sensitivity, specificity, and receiver operating characteristic curves.Results::A normal fetal lung GA grading model was established and validated. The sensitivity of each class in the independent test set was 91.7%, 69.8%, and 86.4%, respectively. The specificity of each class in the independent test set was 76.8%, 90.0%, and 83.1%, respectively. The total accuracy was 83.8%. The area under the curve (AUC) of each class was 0.982, 0.907, and 0.960, respectively. The micro-average AUC was 0.957, and the macro-average AUC was 0.949.Conclusions::The normal fetal lung GA grading model could accurately identify ultrasound images of the fetal lung at different GAs, which can be used to identify cases of abnormal lung development due to gestational diseases and evaluate lung maturity after antenatal corticosteroid therapy. The results indicate that DL algorithms can be used as a non-invasive method to predict FLM.
其他文献
新时期建筑建设规模的扩大,对社会生产力的提高产生了积极的影响。在建筑工程实践中,为了完善好与之相关的地基基础与桩基础土建施工计划,增加其中的技术含量,则需要对切实有效的
近年来,随着信息技术的不断发展,城市信息化应用水平不断提升,打造智慧城市已经成为城市信息化建设新的发展趋势。建设智慧城市,也是我国实现城市的可持续发展、提升国际综合竞争
随着社会经济和交通设施的稳步改善,城市道路的设计也需要开发和改善。以前,道路的设计是以人的旅行为目的的,其他方面没有充分考虑。在今后城市道路设计工作中,应更加注重人性化
随着中国的发展越来越好,促进建筑行业的蓬勃发展。在农村城镇化和大城市建设的理念下,全国各地的房地产业也进入了发展的高潮。大量的人口涌入城市,这也导致了城市规模的迅速扩
目的观察经鼻高流量氧疗(HFNC)对慢性阻塞性肺疾病(COPD)合并高碳酸血症患者的临床疗效,并评估生理参数指标对COPD合并轻度高碳酸血症患者疗效的早期预测价值。方法采用回顾性队列研究方法,选择美国重症监护医学信息数据库-Ⅳ(MIMIC-Ⅳ)截至2020年9月发布的2008至2019年COPD合并轻度高碳酸血症患者的相关记录〔45 mmHg(1 mmHg=0.133 kPa)<动脉血二氧化碳分压
现阶段,随着国家政策变化以及电力体制改革,火电企业发展空间严重受限,火电企业的核心竞争力在不断下降。在面对这一问题时,火电企业需要加强人才资源争夺,提升内部核心竞争力,占据
建筑工程造价超预算情况不但对建筑施工管理具有较大影响,还会给建筑工程企业带来经营上的风险,加强工程造价超预算原因研究和探讨,分析工程造价控制的有效策略,将有助于提升建筑
近年来,在城市建设规模持续增长的背景下,建筑业取得了跨越式的发展。另外,人们的生活质量每天都在提高,这促使人们对住房建设的质量提出越来越高的要求。但是,在实施房屋项目时,仍
新时期我国道路交通建设事业发展速度的加快,给经济社会建设效果增强中带来了保障作用。在加强公路与桥梁建设、高效完成现场作业计划的过程中,需要了解与之相关的施工技术问题
在我国经济建设中,国有企业是重要构建部分,对于维护我国经济稳定以及社会稳定有着重要影响。在以习近平总书记为核心的新型思想建设领导下,国有企业需要在新形势新时期的背景下