Department of Ultrasonic Medicine, The First Affiliated Hospital of Sun Yat-sen University, Guangzhou, Guangdong, China.
Clinical Trials Unit, The First Affiliated Hospital of Sun Yat-sen University, Guangzhou, China.
Ultrasound Obstet Gynecol. 2024 Oct;64(4):453-462. doi: 10.1002/uog.29101. Epub 2024 Sep 17.
Performing obstetric ultrasound scans is challenging for inexperienced operators; therefore, the prenatal screening artificial intelligence system (PSAIS) software was developed to provide real-time feedback and guidance for trainees during their scanning procedures. The aim of this study was to investigate the potential benefits of utilizing such an artificial intelligence system to enhance the efficiency of obstetric ultrasound training in acquiring and interpreting standard basic views.
A prospective, single-center randomized controlled study was conducted at The First Affiliated Hospital of Sun Yat-sen University. From September 2022 to April 2023, residents with no prior obstetric ultrasound experience were recruited and assigned randomly to either a PSAIS-assisted training group or a conventional training group. Each trainee underwent a four-cycle practical scan training program, performing 20 scans in each cycle on pregnant volunteers at 18-32 gestational weeks, focusing on acquiring and interpreting standard basic views. At the end of each cycle, a test scan evaluated trainees' ability to obtain standard ultrasound views without PSAIS assistance, and image quality was rated by both the trainees themselves and an expert (in a blinded manner). The primary outcome was the number of training cycles required for each trainee to meet a certain standard of proficiency (i.e. end-of-cycle test scored by the expert at ≥ 80%). Secondary outcomes included the expert ratings of the image quality in each trainee's end-of-cycle test and the discordance between ratings by trainees and the expert.
In total, 32 residents and 1809 pregnant women (2720 scans) were recruited for the study. The PSAIS-assisted trainee group required significantly fewer training cycles compared with the non-PSAIS-assisted group to meet quality requirements (P = 0.037). Based on the expert ratings of image quality, the PSAIS-assisted training group exhibited superior ability in acquiring standard imaging views compared with the conventional training group in the third (P = 0.012) and fourth (P < 0.001) cycles. In both groups, the discordance between trainees' ratings of the quality of their own images and the expert's ratings decreased with increasing training time. A statistically significant difference in overall trainee-expert rating discordance between the two groups emerged at the end of the first training cycle and remained at every cycle thereafter (P < 0.013).
By assisting inexperienced trainees in obtaining and interpreting standard basic obstetric scanning views, the use of artificial intelligence-assisted systems has the potential to improve training effectiveness. © 2024 International Society of Ultrasound in Obstetrics and Gynecology.
对于经验不足的操作人员来说,进行产科超声检查具有挑战性;因此,开发了产前筛查人工智能系统(PSAIS)软件,以便在操作人员进行扫描过程中为其提供实时反馈和指导。本研究旨在探讨利用人工智能系统增强产科超声培训获取和解释标准基本视图效率的潜在益处。
本研究是一项在中山大学附属第一医院进行的前瞻性、单中心随机对照研究。研究于 2022 年 9 月至 2023 年 4 月期间,招募了没有产科超声经验的住院医师,并将其随机分配至 PSAIS 辅助培训组或常规培训组。每位学员都接受了为期四轮的实践扫描培训计划,在 18-32 孕周的孕妇志愿者身上进行 20 次扫描,重点是获取和解释标准基本视图。每轮结束时,都要进行一次测试扫描,评估学员在没有 PSAIS 辅助的情况下获取标准超声图像的能力,图像质量由学员和专家(以盲法方式)进行评分。主要结局是每位学员达到一定熟练程度标准(即专家在每个周期结束时评分≥80%)所需的培训周期数。次要结局包括学员在每个周期结束时的测试扫描中专家对图像质量的评分,以及学员和专家评分之间的差异。
共有 32 名住院医师和 1809 名孕妇(2720 次扫描)参与了这项研究。与非 PSAIS 辅助组相比,PSAIS 辅助组学员需要的培训周期明显更少,才能达到质量要求(P=0.037)。根据专家对图像质量的评分,PSAIS 辅助培训组在第三(P=0.012)和第四(P<0.001)轮中获取标准成像视图的能力明显优于常规培训组。在两个组中,随着培训时间的增加,学员对自己图像质量的评分与专家评分之间的差异逐渐减少。两组学员-专家评分差异的总体差异在第一培训周期结束时出现统计学意义,并在随后的每个周期中仍然存在(P<0.013)。
通过帮助经验不足的学员获取和解释标准的基本产科扫描视图,使用人工智能辅助系统有可能提高培训效果。 © 2024 年国际妇产科超声学会。