Roblin Douglas, Barzilay Joshua, Tolsma Dennis, Robinson Brandi, Schild Laura, Cromwell Lee, Braun Hayley, Nash Rebecca, Gerth Joseph, Hunkeler Enid, Quinn Virginia P, Tangpricha Vin, Goodman Michael
School of Public Health, Georgia State University, Atlanta; Center for Clinical and Outcomes Research, Kaiser Permanente Georgia, Atlanta.
Center for Clinical and Outcomes Research, Kaiser Permanente Georgia, Atlanta.
Ann Epidemiol. 2016 Mar;26(3):198-203. doi: 10.1016/j.annepidem.2016.01.004. Epub 2016 Feb 4.
We describe a novel algorithm for identifying transgender people and determining their male-to-female (MTF) or female-to-male (FTM) identity in electronic medical records of an integrated health system.
A computer program scanned Kaiser Permanente Georgia electronic medical records from January 2006 through December 2014 for relevant diagnostic codes, and presence of specific keywords (e.g., "transgender" or "transsexual") in clinical notes. Eligibility was verified by review of de-identified text strings containing targeted keywords, and if needed, by an additional in-depth review of records. Once transgender status was confirmed, FTM or MTF identity was assessed using a second program and another round of text string reviews.
Of 813,737 members, 271 were identified as possibly transgender: 137 through keywords only, 25 through diagnostic codes only, and 109 through both codes and keywords. Of these individuals, 185 (68%, 95% confidence interval [CI]: 62%-74%) were confirmed as definitely transgender. The proportions (95% CIs) of definite transgender status among persons identified via keywords, diagnostic codes, and both were 45% (37%-54%), 56% (35%-75%), and 100% (96%-100%). Of the 185 definitely transgender people, 99 (54%, 95% CI: 46%-61%) were MTF, 84 (45%, 95% CI: 38%-53%) were FTM. For two persons, gender identity remained unknown. Prevalence of transgender people (per 100,000 members) was 4.4 (95% CI: 2.6-7.4) in 2006 and 38.7 (95% CI: 32.4-46.2) in 2014.
The proposed method of identifying candidates for transgender health studies is low cost and relatively efficient. It can be applied in other similar health care systems.
我们描述了一种新算法,用于在综合医疗系统的电子病历中识别跨性别者,并确定他们的男变女(MTF)或女变男(FTM)身份。
一个计算机程序扫描了凯撒医疗机构佐治亚州分部2006年1月至2014年12月的电子病历,查找相关诊断代码以及临床记录中特定关键词(如“跨性别者”或“易性癖者”)的出现情况。通过审查包含目标关键词的去识别文本字符串来验证资格,如有需要,还会对记录进行额外的深入审查。一旦确认跨性别身份,就使用第二个程序和另一轮文本字符串审查来评估FTM或MTF身份。
在813,737名成员中,271人被确定可能为跨性别者:仅通过关键词确定的有137人,仅通过诊断代码确定的有25人,通过代码和关键词两者确定的有109人。在这些个体中,185人(68%,95%置信区间[CI]:62%-74%)被确认为肯定是跨性别者。通过关键词、诊断代码以及两者确定的人中,肯定为跨性别身份的比例(95%CI)分别为45%(37%-54%)、56%(35%-75%)和100%(96%-100%)。在185名肯定为跨性别者中,99人(54%,95%CI:46%-61%)为MTF,84人(45%,95%CI:38%-53%)为FTM。有两人的性别身份仍未知。2006年跨性别者的患病率(每10万名成员)为4.4(95%CI:2.6-7.4),2014年为38.7(95%CI:32.4-46.2)。
所提出的识别跨性别健康研究候选者的方法成本低且效率相对较高。它可应用于其他类似的医疗保健系统。