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基于深度学习和统计学习的胎儿形态异常识别与模式识别(PARADISE):使用胎儿形态超声扫描开发智能决策支持系统以检测胎儿先天性异常的研究方案。

Pattern Recognition and Anomaly Detection in fetal morphology using Deep Learning and Statistical learning (PARADISE): protocol for the development of an intelligent decision support system using fetal morphology ultrasound scan to detect fetal congenital anomaly detection.

机构信息

Department of Computer Science, University of Craiova, Craiova, Romania

Department of Computers and Information Technology, University of Craiova, Craiova, Romania.

出版信息

BMJ Open. 2024 Feb 15;14(2):e077366. doi: 10.1136/bmjopen-2023-077366.

Abstract

INTRODUCTION

Congenital anomalies are the most encountered cause of fetal death, infant mortality and morbidity. 7.9 million infants are born with congenital anomalies yearly. Early detection of congenital anomalies facilitates life-saving treatments and stops the progression of disabilities. Congenital anomalies can be diagnosed prenatally through morphology scans. A correct interpretation of the morphology scan allows a detailed discussion with the parents regarding the prognosis. The central feature of this project is the development of a specialised intelligent system that uses two-dimensional ultrasound movies obtained during the standard second trimester morphology scan to identify congenital anomalies in fetuses.

METHODS AND ANALYSIS

The project focuses on three pillars: committee of deep learning and statistical learning algorithms, statistical analysis, and operational research through learning curves. The cross-sectional study is divided into a training phase where the system learns to detect congenital anomalies using fetal morphology ultrasound scan, and then it is tested on previously unseen scans. In the training phase, the intelligent system will learn to answer the following specific objectives: (a) the system will learn to guide the sonographer's probe for better acquisition; (b) the fetal planes will be automatically detected, measured and stored and (c) unusual findings will be signalled. During the testing phase, the system will automatically perform the above tasks on previously unseen videos.Pregnant patients in their second trimester admitted for their routine scan will be consecutively included in a 32-month study (4 May 2022-31 December 2024). The number of patients is 4000, enrolled by 10 doctors/sonographers. We will develop an intelligent system that uses multiple artificial intelligence algorithms that interact between themselves, in bulk or individual. For each anatomical part, there will be an algorithm in charge of detecting it, followed by another algorithm that will detect whether anomalies are present or not. The sonographers will validate the findings at each intermediate step.

ETHICS AND DISSEMINATION

All protocols and the informed consent form comply with the Health Ministry and professional society ethics guidelines. The University of Craiova Ethics Committee has approved this study protocol as well as the Romanian Ministry of Research Innovation and Digitization that funded this research. The study will be implemented and reported in line with the STROBE (STrengthening the Reporting of OBservational studies in Epidemiology) statement.

TRIAL REGISTRATION NUMBER

The study is registered under the name 'Pattern recognition and Anomaly Detection in fetal morphology using Deep Learning and Statistical Learning', project number 101PCE/2022, project code PN-III-P4-PCE-2021-0057.

TRIAL REGISTRATION

ClinicalTrials.gov, unique identifying number NCT05738954, date of registration: 2 November 2023.

摘要

简介

先天性畸形是导致胎儿死亡、婴儿死亡和发病的最常见原因。每年有 790 万婴儿出生时患有先天性畸形。早期发现先天性畸形可以进行救生治疗并阻止残疾的发展。先天性畸形可以通过形态扫描在产前诊断。正确解读形态扫描可以与父母进行详细讨论预后。该项目的核心特征是开发一个专门的智能系统,该系统使用标准中期形态扫描期间获得的二维超声电影来识别胎儿中的先天性异常。

方法和分析

该项目侧重于三个支柱:深度学习和统计学习算法委员会、统计分析和通过学习曲线进行的运营研究。这项横断面研究分为培训阶段和测试阶段。在培训阶段,系统通过使用胎儿形态超声扫描来学习检测先天性异常,然后在以前未见过的扫描上进行测试。在培训阶段,智能系统将学习回答以下具体目标:(a)系统将学习指导超声医师进行更好的采集;(b)自动检测、测量和存储胎儿平面;(c)发出异常发现信号。在测试阶段,系统将自动在以前未见过的视频上执行上述任务。在妊娠中期进行常规扫描的孕妇将连续纳入一项为期 32 个月的研究中(2022 年 5 月 4 日至 2024 年 12 月 31 日)。将有 4000 名患者由 10 名医生/超声医师纳入研究。我们将开发一个智能系统,该系统使用相互交互的多个人工智能算法,批量或单独使用。对于每个解剖部分,都会有一个负责检测它的算法,然后是另一个检测是否存在异常的算法。超声医师将在每个中间步骤验证结果。

伦理和传播

所有方案和知情同意书均符合卫生部和专业学会的伦理准则。克卢日纳波卡大学伦理委员会已批准该研究方案以及资助该研究的罗马尼亚研究创新和数字化部。该研究将按照 STROBE(加强观察性研究的报告)声明进行实施和报告。

试验注册号码

该研究以“使用深度学习和统计学习进行胎儿形态的模式识别和异常检测”命名,项目编号 101PCE/2022,项目代码 PN-III-P4-PCE-2021-0057。

试验注册

ClinicalTrials.gov,唯一识别号 NCT05738954,注册日期:2023 年 11 月 2 日。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/debf/10875539/02f32d367862/bmjopen-2023-077366f01.jpg

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