Division of Plastic and Reconstructive Surgery, University of Southern California Keck School of Medicine.
Children's Hospital of Los Angeles, Division of Plastic and Maxillofacial Surgery, Los Angeles, CA.
J Craniofac Surg. 2021;32(2):482-485. doi: 10.1097/SCS.0000000000006917.
Crowd sourcing has been used in multiple disciplines to quickly generate large amounts of diverse data. The objective of this study was to use crowdsourcing to grade preoperative severity of unilateral cleft lip phenotype in a multiethnic cohort with the hypothesis that crowdsourcing could efficiently achieve similar rankings compared to expert surgeons. Deidentified preoperative photos were collected for patients with primary, unilateral cleft lip with or without cleft palate (CL ± P). A platform was developed with C-SATS for pairwise comparisons utilizing Elo rankings by crowdsource workers through Amazon Mechanical Turk. Images were independently ranked by 2 senior surgeons for comparison. Seventy-six patients with varying severity of unilateral (CL ± P) phenotype were chosen from Operation Smile missions in Bolivia, Madagascar, Vietnam, and Morocco. Patients were an average of 1.2 years' old, ranging from 3 months to 3.3 years. Each image was compared with 10 others, for a total of 380 unique pairwise comparisons. A total of 4627 total raters participated with a median of 12 raters per pair. Data collection was completed in <20 hours. The crowdsourcing ranking and expert surgeon rankings were highly correlated with Pearson correlation coefficient of R = 0.77 (P = 0.0001). Crowdsourcing provides a rapid and convenient method of obtaining preoperative severity ratings, comparable to expert surgeon assessment, across multiple ethnicities. The method serves as a potential solution to the current lack of rating systems for preoperative severity and overcomes the difficulty of acquiring large-scale assessment from expert surgeons.
众包已被应用于多个学科领域,用于快速生成大量多样的数据。本研究的目的是利用众包对多民族队列的单侧唇裂表型术前严重程度进行分级,并假设众包可以与专家外科医生的评估相比,高效地实现类似的分级。收集了患有单侧唇裂伴或不伴腭裂(CL±P)的初诊患者的术前无身份信息照片。通过 Amazon Mechanical Turk 平台上的 C-SATS 开发了一个使用 Elo 排名进行两两比较的平台,由众包人员进行评分。然后由 2 位资深外科医生对图像进行独立排名以进行比较。从 Operation Smile 在玻利维亚、马达加斯加、越南和摩洛哥的任务中选择了 76 名单侧(CL±P)表型严重程度不同的患者。患者平均年龄为 1.2 岁,范围为 3 个月至 3.3 岁。每张图像与其他 10 张图像进行比较,共进行了 380 次独特的两两比较。共有 4627 名评分者参与,每对平均有 12 名评分者。数据收集在不到 20 小时内完成。众包排名和专家外科医生排名高度相关,Pearson 相关系数 R = 0.77(P = 0.0001)。众包提供了一种快速便捷的获取术前严重程度评分的方法,与专家外科医生的评估相当,适用于多种族。该方法可作为目前缺乏术前严重程度评分系统的解决方案,并克服了从专家外科医生处获取大规模评估的困难。