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一款展示TNM癌症分期排除算法方法的基于网络的应用程序的评估

Evaluation of a Web-Based App Demonstrating an Exclusionary Algorithmic Approach to TNM Cancer Staging.

作者信息

Kim Matthew

机构信息

Brigham and Women's Hospital, Division of Endocrinology, Diabetes and Hypertension, Boston, MA, United States.

出版信息

JMIR Cancer. 2015 Apr 2;1(1):e3. doi: 10.2196/cancer.4019.

Abstract

BACKGROUND

TNM staging plays a critical role in the evaluation and management of a range of different types of cancers. The conventional combinatorial approach to the determination of an anatomic stage relies on the identification of distinct tumor (T), node (N), and metastasis (M) classifications to generate a TNM grouping. This process is inherently inefficient due to the need for scrupulous review of the criteria specified for each classification to ensure accurate assignment. An exclusionary approach to TNM staging based on sequential constraint of options may serve to minimize the number of classifications that need to be reviewed to accurately determine an anatomic stage.

OBJECTIVE

Our aim was to evaluate the usability and utility of a Web-based app configured to demonstrate an exclusionary approach to TNM staging.

METHODS

Internal medicine residents, surgery residents, and oncology fellows engaged in clinical training were asked to evaluate a Web-based app developed as an instructional aid incorporating (1) an exclusionary algorithm that polls tabulated classifications and sorts them into ranked order based on frequency counts, (2) reconfiguration of classification criteria to generate disambiguated yes/no questions that function as selection and exclusion prompts, and (3) a selectable grid of TNM groupings that provides dynamic graphic demonstration of the effects of sequentially selecting or excluding specific classifications. Subjects were asked to evaluate the performance of this app after completing exercises simulating the staging of different types of cancers encountered during training.

RESULTS

Survey responses indicated high levels of agreement with statements supporting the usability and utility of this app. Subjects reported that its user interface provided a clear display with intuitive controls and that the exclusionary approach to TNM staging it demonstrated represented an efficient process of assignment that helped to clarify distinctions between tumor, node, and metastasis classifications. High overall usefulness ratings were bolstered by supplementary comments suggesting that this app might be readily adopted for use in clinical practice.

CONCLUSIONS

A Web-based app that utilizes an exclusionary algorithm to prompt the assignment of tumor, node, and metastasis classifications may serve as an effective instructional aid demonstrating an efficient and informative approach to TNM staging.

摘要

背景

TNM分期在多种不同类型癌症的评估和管理中起着关键作用。传统的确定解剖学分期的组合方法依赖于识别不同的肿瘤(T)、淋巴结(N)和转移(M)分类以生成TNM分组。由于需要严格审查为每个分类指定的标准以确保准确分配,这个过程本质上效率低下。基于选项的顺序约束的TNM分期排除法可能有助于最小化准确确定解剖学分期所需审查的分类数量。

目的

我们的目的是评估一个基于网络的应用程序的可用性和实用性,该应用程序被配置为展示TNM分期的排除法。

方法

参与临床培训的内科住院医师、外科住院医师和肿瘤学研究员被要求评估一个作为教学辅助工具开发的基于网络的应用程序,该程序包含:(1)一种排除算法,该算法对列表分类进行轮询,并根据频率计数将它们排序成等级顺序;(2)重新配置分类标准以生成消除歧义的是/否问题,这些问题用作选择和排除提示;(3)一个可选择的TNM分组网格,该网格提供动态图形演示依次选择或排除特定分类的效果。在完成模拟培训期间遇到的不同类型癌症分期的练习后,要求受试者评估该应用程序的性能。

结果

调查回复表明,对于支持该应用程序可用性和实用性的陈述有高度的一致性。受试者报告说,其用户界面显示清晰,控件直观,并且它所展示的TNM分期排除法代表了一个有效的分配过程,有助于澄清肿瘤、淋巴结和转移分类之间的区别。补充评论表明该应用程序可能很容易被临床实践采用,这进一步支持了较高的总体有用性评分。

结论

一个利用排除算法来提示肿瘤、淋巴结和转移分类分配的基于网络的应用程序,可能作为一种有效的教学辅助工具,展示一种高效且信息丰富的TNM分期方法。

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