Oropharyngeal Cancer Staging Health Record Extraction Using Artificial Intelligence.

IF 6 1区 医学 Q1 OTORHINOLARYNGOLOGY JAMA otolaryngology-- head & neck surgery Pub Date : 2024-12-01 DOI:10.1001/jamaoto.2024.1201
Elif Baran, Melissa Lee, Steven Aviv, Jessica Weiss, Chris Pettengell, Irene Karam, Andrew Bayley, Ian Poon, Kelvin K W Chan, Ambica Parmar, Martin Smoragiewicz, Hagen Klieb, Tra Truong, Pejman Maralani, Danny J Enepekides, Kevin M Higgins, Antoine Eskander
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Abstract

Importance: Accurate, timely, and cost-effective methods for staging oropharyngeal cancers are crucial for patient prognosis and treatment decisions, but staging documentation is often inaccurate or incomplete. With the emergence of artificial intelligence in medicine, data abstraction may be associated with reduced costs but increased efficiency and accuracy of cancer staging.

Objective: To evaluate an algorithm using an artificial intelligence engine capable of extracting essential information from medical records of patients with oropharyngeal cancer and assigning tumor, nodal, and metastatic stages according to American Joint Committee on Cancer eighth edition guidelines.

Design, setting, and participants: This retrospective diagnostic study was conducted among a convenience sample of 806 patients with oropharyngeal squamous cell carcinoma. Medical records of patients with oropharyngeal squamous cell carcinomas who presented to a single tertiary care center between January 1, 2010, and August 1, 2020, were reviewed. A ground truth cancer stage dataset and comprehensive staging rule book consisting of 135 rules encompassing p16 status, tumor, and nodal and metastatic stage were developed. Subsequently, 4 distinct models were trained: model T (entity relationship extraction) for anatomical location and invasion state, model S (numerical extraction) for lesion size, model M (sequential classification) for metastasis detection, and a p16 model for p16 status. For validation, results were compared against ground truth established by expert reviewers, and accuracy was reported. Data were analyzed from March to November 2023.

Main outcomes and measures: The accuracy of algorithm cancer stages was compared with ground truth.

Results: Among 806 patients with oropharyngeal cancer (mean [SD] age, 63.6 [10.6] years; 651 males [80.8%]), 421 patients (52.2%) were positive for human papillomavirus. The artificial intelligence engine achieved accuracies of 55.9% (95% CI, 52.5%-59.3%) for tumor, 56.0% (95% CI, 52.5%-59.4%) for nodal, and 87.6% (95% CI, 85.1%-89.7%) for metastatic stages and 92.1% (95% CI, 88.5%-94.6%) for p16 status. Differentiation between localized (stages 1-2) and advanced (stages 3-4) cancers achieved 80.7% (95% CI, 77.8%-83.2%) accuracy.

Conclusion and relevance: This study found that tumor and nodal staging accuracies were fair to good and excellent for metastatic stage and p16 status, with clinical relevance in assigning optimal treatment and reducing toxic effect exposures. Further model refinement and external validation with electronic health records at different institutions are necessary to improve algorithm accuracy and clinical applicability.

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利用人工智能提取口咽癌分期健康记录
重要性:准确、及时、经济高效的口咽癌分期方法对患者的预后和治疗决策至关重要,但分期记录往往不准确或不完整。随着人工智能在医学领域的兴起,数据抽取可能会降低癌症分期的成本并提高其效率和准确性:目的:评估一种使用人工智能引擎的算法,该算法能够从口咽癌患者的医疗记录中提取基本信息,并根据美国癌症联合委员会第八版指南对肿瘤、结节和转移进行分期:这项回顾性诊断研究是在 806 名口咽鳞状细胞癌患者中随机抽样进行的。研究人员查阅了2010年1月1日至2020年8月1日期间在一家三级医疗中心就诊的口咽鳞状细胞癌分期患者的病历。开发了一个基本真实癌症分期数据集和由 135 条规则组成的综合分期规则手册,其中包括 p16 状态、肿瘤、结节和转移分期。随后,对 4 个不同的模型进行了训练:T 模型(实体关系提取)用于解剖位置和侵袭状态,S 模型(数值提取)用于病灶大小,M 模型(序列分类)用于转移检测,p16 模型用于 p16 状态。在验证时,将结果与专家评审员确定的基本事实进行比较,并报告准确性。数据分析时间为 2023 年 3 月至 11 月:将算法癌症分期的准确性与地面实况进行比较:在806名口咽癌患者(平均[标码]年龄为63.6[10.6]岁;651名男性[80.8%])中,421名患者(52.2%)人乳头瘤病毒阳性。人工智能引擎对肿瘤、结节和转移分期的准确率分别为 55.9%(95% CI,52.5%-59.3%)、56.0%(95% CI,52.5%-59.4%)和 87.6%(95% CI,85.1%-89.7%),对 p16 状态的准确率为 92.1%(95% CI,88.5%-94.6%)。区分局部癌症(1-2 期)和晚期癌症(3-4 期)的准确率为 80.7%(95% CI,77.8%-83.2%):这项研究发现,肿瘤和结节分期的准确率从一般到良好,转移分期和 p16 状态的准确率从优秀到良好,这对分配最佳治疗方案和减少毒副作用具有临床意义。为了提高算法的准确性和临床适用性,有必要进一步完善模型并利用不同机构的电子病历进行外部验证。
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来源期刊
CiteScore
9.10
自引率
5.10%
发文量
230
期刊介绍: JAMA Otolaryngology–Head & Neck Surgery is a globally recognized and peer-reviewed medical journal dedicated to providing up-to-date information on diseases affecting the head and neck. It originated in 1925 as Archives of Otolaryngology and currently serves as the official publication for the American Head and Neck Society. As part of the prestigious JAMA Network, a collection of reputable general medical and specialty publications, it ensures the highest standards of research and expertise. Physicians and scientists worldwide rely on JAMA Otolaryngology–Head & Neck Surgery for invaluable insights in this specialized field.
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