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基于CT直线加速器的鼻咽癌容积调强放疗中的风险评估与质量管理:一种改进的失效模式与效应分析及故障树分析方法

Risk assessment and quality management in AIO based on CT-linac for nasopharyngeal carcinoma: An improved FMEA and FTA approach.

作者信息

Wang Guangyu, Ding Shouliang, Yang Xin, Huang Sijuan, Zhou Guanqun, Liu Lu, Li Hua, Jia Lecheng, Diao Wenchao, Sun Ying, Liu Yanfei, Piao Zun, Xu Chendi, Chen Li, Huang Xiaoyan

机构信息

State Key Laboratory of Oncology in South China, Guangdong Key Laboratory of Nasopharyngeal Carcinoma Diagnosis and Therapy, Guangdong Provincial Clinical Research Center for Cancer, Sun Yat-sen University Cancer Center, Guangzhou, P. R. China.

Radiotherapy Laboratory, Shenzhen United Imaging Research Institute of Innovative Medical Equipment, Shenzhen, China.

出版信息

Med Phys. 2025 Apr;52(4):2425-2437. doi: 10.1002/mp.17620. Epub 2025 Jan 10.

Abstract

BACKGROUND

All-in-one radiotherapy workflow (AIO) is a novel one-stop solution that integrates the multiple conventional radiotherapy steps from simulation, contouring, planning, image guidance, beam delivery, and in vivo dosimetry into a single device (integrated computed tomography linac, the uRT-linac 506c), making the treatment process more efficient and convenient while reducing errors for cancer patients' initial radiotherapy. Despite its numerous advantages, the implementation of AIO faces challenges such as interdisciplinary coordination, software and hardware complexity, and reliance on artificial intelligence. To ensure its safety and effectiveness, it is necessary to conduct a risk assessment and identify appropriate quality management measures.

PURPOSE

To perform risk assessment on the AIO for nasopharyngeal carcinoma using failure mode and effects analysis (FMEA) and fault tree analysis (FTA), and to validate the effectiveness of the quality management measures.

METHODS

A flowchart was established for the AIO of nasopharyngeal carcinoma. FMEA analysis was conducted based on the flowchart, and quantitative assessments of each failure mode (FM) were performed to obtain (occurrence), (severity), and (Detectability). Weighted , , and were obtained using the similarity aggregation method (SAM), and the final risk priority number (RPN) was calculated by multiplying these values. The FMs were then evaluated into two groups based on whether quality management (QM) measures were implemented, and sorted by the RPN. Finally, FTA analysis was conducted on the highest-risk FMs identified through ranking.

RESULTS

A flowchart of AIO for nasopharyngeal carcinoma was established, consisting of 5 main steps and 28 sub-steps. After FMEA analysis, 86 FMs were identified. In the group without implementing QM measures (QM-free group), the RPN of FMs ranged from 13.5 to 186.2, with a threshold of 94.6 for the top 20% RPN scores, resulting in 17 high-risk FMs. Additionally, 21 FMs had , with a cumulative total of 25 high-risk FMs after removing duplicates. In the group that implemented QM measures (QM group), the RPN of FMs ranged from 3.0 to 46.7, showing an overall decrease compared to the QM-free group. There was a statistically significant difference in RPN between the QM-free (55.80 ± 38.40) and QM (16.17 ± 10.99) groups (p < 0.001), validating the effectiveness of the QM measures. Finally, FTA analysis was performed on the highest-risk step identified in the QM-free group with the highest RPN.

CONCLUSION

The improved FMEA and FTA analysis methods are practical and operational, allowing for a comprehensive analysis of potential failures and risks in the AIO for nasopharyngeal carcinoma. They can effectively assist in establishing and evaluating QM standards for AIO of nasopharyngeal carcinoma. Moreover, the analytical methods and QM measures of this study can be effectively applied to AIO for tumors in other sites.

摘要

背景

一体化放射治疗工作流程(AIO)是一种新颖的一站式解决方案,它将模拟、轮廓勾画、计划制定、图像引导、射束投送和体内剂量测定等多个传统放射治疗步骤整合到一台设备(集成计算机断层扫描直线加速器,即uRT-linac 506c)中,使治疗过程更高效、便捷,同时减少癌症患者初始放射治疗的误差。尽管AIO有诸多优点,但其实施面临跨学科协调、软硬件复杂性以及对人工智能的依赖等挑战。为确保其安全性和有效性,有必要进行风险评估并确定适当的质量管理措施。

目的

使用失效模式与效应分析(FMEA)和故障树分析(FTA)对鼻咽癌的AIO进行风险评估,并验证质量管理措施的有效性。

方法

为鼻咽癌的AIO建立了一个流程图。基于该流程图进行FMEA分析,并对每个失效模式(FM)进行定量评估,以获得O(发生率)、S(严重程度)和D(可探测性)。使用相似性聚合方法(SAM)获得加权O、S和D,并通过将这些值相乘计算最终风险优先数(RPN)。然后根据是否实施质量管理(QM)措施将FMs分为两组,并按RPN排序。最后,对通过排序确定的最高风险FMs进行FTA分析。

结果

建立了鼻咽癌AIO的流程图,包括5个主要步骤和28个子步骤。经过FMEA分析,识别出86个FMs。在未实施QM措施的组(无QM组)中,FMs的RPN范围为13.5至186.2,前20%RPN分数的阈值为94.6,导致17个高风险FMs。此外,21个FMs的O = 3,去除重复项后高风险FMs累计共有25个。在实施QM措施的组(QM组)中,FMs的RPN范围为3.0至46.7,与无QM组相比总体有所下降。无QM组(55.80±38.40)和QM组(16.17±10.99)的RPN存在统计学显著差异(p < 0.001),验证了QM措施的有效性。最后,对无QM组中RPN最高的最高风险步骤进行了FTA分析。

结论

改进的FMEA和FTA分析方法实用且可操作,能够全面分析鼻咽癌AIO中的潜在故障和风险。它们可以有效地协助建立和评估鼻咽癌AIO的QM标准。此外,本研究的分析方法和QM措施可有效地应用于其他部位肿瘤的AIO。

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