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语音识别软件辅助下的口述临床文档与专业转录员的错误分析。

Analysis of Errors in Dictated Clinical Documents Assisted by Speech Recognition Software and Professional Transcriptionists.

机构信息

Department of Medicine, Brigham and Women's Hospital, Boston, Massachusetts; Harvard Medical School, Boston, Massachusetts.

Department of Information Systems, Partners HealthCare, Boston, Massachusetts.

出版信息

JAMA Netw Open. 2018 Jul;1(3):e180530. doi: 10.1001/jamanetworkopen.2018.0530. Epub 2018 Jul 6.

Abstract

IMPORTANCE

Accurate clinical documentation is critical to health care quality and safety. Dictation services supported by speech recognition (SR) technology and professional medical transcriptionists are widely used by US clinicians. However, the quality of SR-assisted documentation has not been thoroughly studied.

OBJECTIVE

To identify and analyze errors at each stage of the SR-assisted dictation process.

DESIGN SETTING AND PARTICIPANTS

This cross-sectional study collected a stratified random sample of 217 notes (83 office notes, 75 discharge summaries, and 59 operative notes) dictated by 144 physicians between January 1 and December 31, 2016, at 2 health care organizations using Dragon Medical 360 | eScription (Nuance). Errors were annotated in the SR engine-generated document (SR), the medical transcriptionist-edited document (MT), and the physician's signed note (SN). Each document was compared with a criterion standard created from the original audio recordings and medical record review.

MAIN OUTCOMES AND MEASURES

Error rate; mean errors per document; error frequency by general type (eg, deletion), semantic type (eg, medication), and clinical significance; and variations by physician characteristics, note type, and institution.

RESULTS

Among the 217 notes, there were 144 unique dictating physicians: 44 female (30.6%) and 10 unknown sex (6.9%). Mean (SD) physician age was 52 (12.5) years (median [range] age, 54 [28-80] years). Among 121 physicians for whom specialty information was available (84.0%), 35 specialties were represented, including 45 surgeons (37.2%), 30 internists (24.8%), and 46 others (38.0%). The error rate in SR notes was 7.4% (ie, 7.4 errors per 100 words). It decreased to 0.4% after transcriptionist review and 0.3% in SNs. Overall, 96.3% of SR notes, 58.1% of MT notes, and 42.4% of SNs contained errors. Deletions were most common (34.7%), then insertions (27.0%). Among errors at the SR, MT, and SN stages, 15.8%, 26.9%, and 25.9%, respectively, involved clinical information, and 5.7%, 8.9%, and 6.4%, respectively, were clinically significant. Discharge summaries had higher mean SR error rates than other types (8.9% vs 6.6%; difference, 2.3%; 95% CI, 1.0%-3.6%; < .001). Surgeons' SR notes had lower mean error rates than other physicians' (6.0% vs 8.1%; difference, 2.2%; 95% CI, 0.8%-3.5%; = .002). One institution had a higher mean SR error rate (7.6% vs 6.6%; difference, 1.0%; 95% CI, -0.2% to 2.8%; = .10) but lower mean MT and SN error rates (0.3% vs 0.7%; difference, -0.3%; 95% CI, -0.63% to -0.04%; = .03 and 0.2% vs 0.6%; difference, -0.4%; 95% CI, -0.7% to -0.2%; = .003).

CONCLUSIONS AND RELEVANCE

Seven in 100 words in SR-generated documents contain errors; many errors involve clinical information. That most errors are corrected before notes are signed demonstrates the importance of manual review, quality assurance, and auditing.

摘要

重要性:准确的临床文档对于医疗保健质量和安全至关重要。美国临床医生广泛使用支持语音识别 (SR) 技术和专业医疗转录的听写服务。然而,SR 辅助文档的质量尚未得到彻底研究。

目的:确定和分析 SR 辅助听写过程中每个阶段的错误。

设计、地点和参与者:本横断面研究于 2016 年 1 月 1 日至 12 月 31 日期间,在两家医疗机构使用 Dragon Medical 360 | eScription (Nuance),收集了 144 名医生的 217 份记录(83 份办公室记录、75 份出院总结和 59 份手术记录)。在 SR 引擎生成的文档 (SR)、医疗转录编辑的文档 (MT) 和医生签署的记录 (SN) 中对错误进行注释。每个文档都与从原始录音和病历审查创建的标准进行比较。

主要结果和措施:错误率;每份文档的平均错误数;按一般类型(如删除)、语义类型(如药物)和临床意义的错误频率;以及按医生特征、记录类型和机构的变化。

结果:在 217 份记录中,有 144 位独特的记录医生:44 位女性(30.6%)和 10 位性别未知(6.9%)。平均(SD)医生年龄为 52(12.5)岁(中位数[范围]年龄,54 [28-80] 岁)。在可提供专业信息的 121 位医生中,有 35 个专业,包括 45 位外科医生(37.2%)、30 位内科医生(24.8%)和 46 位其他医生(38.0%)。SR 记录中的错误率为 7.4%(即每 100 个单词中有 7.4 个错误)。转录后错误率降至 0.4%,SN 中的错误率降至 0.3%。总体而言,96.3%的 SR 记录、58.1%的 MT 记录和 42.4%的 SN 记录中存在错误。删除最为常见(34.7%),其次是插入(27.0%)。在 SR、MT 和 SN 阶段的错误中,分别有 15.8%、26.9%和 25.9%涉及临床信息,分别有 5.7%、8.9%和 6.4%具有临床意义。与其他类型的记录相比,出院总结的 SR 错误率更高(8.9%比 6.6%;差异,2.3%;95%CI,1.0%-3.6%;<0.001)。外科医生的 SR 记录错误率低于其他医生(6.0%比 8.1%;差异,2.2%;95%CI,0.8%-3.5%;=0.002)。一家机构的 SR 错误率更高(7.6%比 6.6%;差异,1.0%;95%CI,-0.2%至 2.8%;=0.10),但 MT 和 SN 错误率更低(0.3%比 0.7%;差异,-0.3%;95%CI,-0.63%至-0.04%;=0.03 和 0.2%比 0.6%;差异,-0.4%;95%CI,-0.7%至-0.2%;=0.003)。

结论和相关性:SR 生成文档中每 100 个单词中有 7 个包含错误;许多错误涉及临床信息。在记录签署之前,大多数错误都得到了纠正,这表明手动审查、质量保证和审核的重要性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7576/6324302/42a4e5c5ac6c/jamanetwopen-1-e180530-g001.jpg

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