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利用电子账单信息自动化治疗总结的开发:头颈部癌症幸存者的试点研究。

Automating Treatment Summary Development Using Electronic Billing Information: A Pilot Study of Survivors of Head and Neck Cancer.

机构信息

1 Memorial Sloan-Kettering Cancer Center, New York, NY.

2 Weill Cornell Medical College, New York, NY.

出版信息

J Oncol Pract. 2019 Jan;15(1):e84-e90. doi: 10.1200/JOP.18.00022. Epub 2018 Dec 3.

Abstract

PURPOSE

Although the provision of a treatment summary (TS) is a quality indicator in oncology, routine delivery of TSs remains challenging. Automatic TS generation could facilitate use, but data on accuracy are lacking in complex cancers such as head and neck cancer (HNC). We developed and evaluated an electronic platform to automate TS generation for HNC.

METHODS

The algorithms autopopulated TSs using data from billing records and an institutional cancer registry. A nurse practitioner used the medical record to verify the accuracy of the information and made corrections electronically. Inaccurate and missing data were considered errors. We described and investigated reasons for errors in the automatically generated TSs.

RESULTS

We enrolled a heterogeneous population of 43 survivors of HNC. Using billing data, the information on primary site, lymph node status, radiation, and chemotherapy use was accurate in 93%, 95%, 93%, and 95% of patients, respectively. Billing data captured surgery accurately in 77% of patients; once an omitted billing code was identified, accuracy increased to 98%. Chemotherapies were captured in 90% of patients. Using the cancer registry, month and year of diagnosis were accurate in 91% of cases; stage was accurate in 28% of cases. Reprogramming the algorithm to ascertain clinical stage when pathologic stage was unavailable resulted in 100% accuracy. The algorithms inconsistently identified radiation receipt and treating physicians from billing data.

CONCLUSION

It is feasible to automatically and accurately generate most components of TSs for HNC using billing and cancer registry data, although clinical review is necessary in some cases.

摘要

目的

尽管提供治疗总结(TS)是肿瘤学的一个质量指标,但常规提供 TS 仍然具有挑战性。自动 TS 生成可以促进其使用,但在头颈部癌症(HNC)等复杂癌症中,缺乏关于准确性的数据。我们开发并评估了一个用于自动生成 HNC TS 的电子平台。

方法

该算法使用计费记录和机构癌症登记处的数据自动填充 TS。一名护士从业者使用病历来验证信息的准确性,并进行电子更正。不准确和缺失的数据被视为错误。我们描述并调查了自动生成的 TS 中错误的原因。

结果

我们纳入了 43 名 HNC 幸存者的异质人群。使用计费数据,原发部位、淋巴结状态、放疗和化疗使用的信息在 93%、95%、93%和 95%的患者中分别准确。计费数据准确记录了 77%的手术;一旦确定了遗漏的计费代码,准确性提高到 98%。90%的患者接受了化疗。使用癌症登记处,91%的病例诊断月份和年份准确;28%的病例分期准确。重新编程算法以确定病理分期不可用时的临床分期,可实现 100%的准确性。算法从计费数据中不一致地识别放疗接受情况和治疗医生。

结论

使用计费和癌症登记处数据自动且准确地生成 HNC 的大多数 TS 组件是可行的,但在某些情况下需要进行临床审查。

相似文献

本文引用的文献

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Head and Neck Cancers, Version 1.2015.《头颈癌,2015年第1版》
J Natl Compr Canc Netw. 2015 Jul;13(7):847-55; quiz 856. doi: 10.6004/jnccn.2015.0102.

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