Chen Yuan-Hsin, Lin Ching-Hsuan, Fan Chiao-Hsin, Long An Jim, Scholl Jeremiah, Kao Yen-Pin, Iqbal Usman, Li Yu-Chuan Jack
Department of Surgery, Massachusetts General Hospital, Boston, MA, United States.
Center for the Evaluation of Value and Risk in Health, Tufts Medical Center, Boston, MA, United States.
JMIR Form Res. 2025 Feb 13;9:e68436. doi: 10.2196/68436.
Wrong-site surgery (WSS) is a critical but preventable medical error, often resulting in severe patient harm and substantial financial costs. While protocols exist to reduce wrong-site surgery, underreporting and inconsistent documentation continue to contribute to its persistence. Machine learning (ML) models, which have shown success in detecting medication errors, may offer a solution by identifying unusual procedure-diagnosis combinations. This study investigated whether an ML approach can effectively adapt to detect surgical errors.
This study aimed to evaluate the transferability and effectiveness of an ML-based model for detecting inconsistencies within surgical documentation, particularly focusing on laterality discrepancies.
We used claims data from the Centers for Medicare and Medicaid Services Limited Data Set (CMS-LDS) from 2017 to 2020, focusing on surgical procedures with documented laterality. We developed an adapted Association Outlier Pattern (AOP) ML model to identify uncommon procedure-diagnosis combinations, specifically targeting discrepancies in laterality. The model was trained on data from 2017 to 2019 and tested on 2020 orthopedic procedures, using ICD-10-PCS (International Classification of Diseases, Tenth Revision, Procedure Coding System) codes to distinguish body part and laterality. Test cases were classified based on alignment between procedural and diagnostic laterality, with 2 key subgroups (right-left and left-right mismatches) identified for evaluation. Model performance was assessed by comparing precision-recall curves and accuracy against rule-based methods.
The findings here included 346,382 claims, of which 2170 claims demonstrated with significant laterality discrepancies between procedures and diagnoses. Among patients with left-side procedures and right-side diagnoses (603/1106), 54.5% were confirmed as errors after clinical review. For right-side procedures with left-side diagnoses (541/1064), 50.8% were classified as errors. The AOP model identified 697 and 655 potentially unusual combinations in the left-right and right-left subgroups, respectively, with over 80% of these cases confirmed as errors following clinical review. Most confirmed errors involved discrepancies in laterality for the same body part, while nonerror cases typically involved general diagnoses without specified laterality.
This investigation showed that the AOP model effectively detects inconsistencies between surgical procedures and diagnoses using CMS-LDS data. The AOP model outperformed traditional rule-based methods, offering higher accuracy in identifying errors. Moreover, the model's transferability from medication-disease associations to procedure-diagnosis verification highlights its broad applicability. By improving the precision of identifying laterality discrepancies, the AOP model can reduce surgical errors, particularly in orthopedic care. These findings suggest that the model enhances patient safety and has the potential to improve clinical decision-making and outcomes.
手术部位错误(WSS)是一种严重但可预防的医疗差错,常常导致患者受到严重伤害并产生高昂的经济成本。尽管存在减少手术部位错误的协议,但报告不足和记录不一致仍在持续导致这一问题的存在。机器学习(ML)模型在检测用药错误方面已取得成功,或许可以通过识别异常的手术 - 诊断组合来提供解决方案。本研究调查了基于机器学习的方法能否有效适用于检测手术错误。
本研究旨在评估基于机器学习的模型在检测手术记录中的不一致性方面的可转移性和有效性,尤其关注左右侧差异。
我们使用了2017年至2020年医疗保险和医疗补助服务中心有限数据集(CMS - LDS)中的理赔数据,重点关注记录了左右侧信息的外科手术。我们开发了一种适应性关联异常模式(AOP)机器学习模型,以识别不常见的手术 - 诊断组合,特别针对左右侧差异。该模型在2017年至2019年的数据上进行训练,并在2020年的骨科手术上进行测试,使用ICD - 10 - PCS(国际疾病分类第十版,手术编码系统)代码来区分身体部位和左右侧。测试病例根据手术和诊断的左右侧一致性进行分类,确定了两个关键亚组(右 - 左和左 - 右不匹配)进行评估。通过将精确召回曲线和准确性与基于规则的方法进行比较来评估模型性能。
本研究共纳入346,382份理赔申请,其中2170份申请显示手术和诊断之间存在明显的左右侧差异。在左侧手术和右侧诊断的患者中(603/1106),54.5%在临床审查后被确认为错误。对于右侧手术和左侧诊断的患者(541/1064),50.8%被归类为错误。AOP模型在左 - 右和右 - 左亚组中分别识别出697和655个潜在的异常组合,其中超过80%的病例在临床审查后被确认为错误。大多数确诊错误涉及同一身体部位的左右侧差异,而非错误病例通常涉及未指定左右侧的一般诊断。
本调查表明,AOP模型使用CMS - LDS数据有效地检测了手术程序和诊断之间的不一致性。AOP模型优于传统的基于规则的方法,在识别错误方面具有更高的准确性。此外,该模型从用药 - 疾病关联到手术 - 诊断验证的可转移性突出了其广泛的适用性。通过提高识别左右侧差异的精度,AOP模型可以减少手术错误,特别是在骨科护理中。这些发现表明该模型提高了患者安全性,并有可能改善临床决策和结果。