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半自动化容积分割工具测量前庭神经鞘瘤重复性和可用性的比较。

A Comparison of Repeatability and Usability of Semi-Automated Volume Segmentation Tools for Measurement of Vestibular Schwannomas.

机构信息

Department of ENT.

Department of Radiology.

出版信息

Otol Neurotol. 2018 Jul;39(6):e496-e505. doi: 10.1097/MAO.0000000000001796.

DOI:10.1097/MAO.0000000000001796
PMID:29649049
Abstract

OBJECTIVE

Semi-automated volume segmentation tools (SAVST) offer a less time consuming technique compared with manual volume segmentation method. No data exists to suggest which of the available applications are optimal for use with vestibular schwannomas (VS). This study aims to compare repeatability and usability of three different SAVST for measurement of VS.

STUDY DESIGN

Experimental comparison of three SAVST.

SETTING

Tertiary skull base unit.

PATIENTS

Twenty-four patients with a unilateral VS imaged with T1-weighted Gadolinium enhanced MRI.

INTERVENTION

Repeated measurements made to determine intra and inter-observer agreement. This was repeated using three different SAVST.

MAIN OUTCOME MEASURES

  1. Intra- and inter-observer intraclass correlation coefficients (ICC), repeatability coefficients (RC), and relative smallest detectable differences (%SDD).2) Usability as determined by the mean number of steps and time required per tumor measurement and the proportion of cases where manual editing was required.

RESULTS

Intra-observer ICCs were significantly better for SliceOmatic and OleaSphere than AW VolumeShare (0.998 versus 0.994, p < 0.05). Inter-observer ICCs were also better for SliceOmatic (0.994) and OleaSphere (0.989) compared with AW VolumeShare (0.976), however, this was only significant for SliceOmatic (p = 0.012). SliceOmatic had a poorer usability profile requiring more manual editing, time, and individual steps per measurement but its "watershed segmentation" algorithm was better at measuring cystic or heterogenous tumors.

CONCLUSIONS

This is the first study to compare three SAVST for measurement of VS. While SliceOmatic had the highest repeatability, Olea Sphere combined comparable repeatability with improved usability and a greater degree of automation and was, therefore, deemed optimal for use in routine clinical practice.

摘要

目的

与手动体积分割方法相比,半自动体积分割工具(SAVST)提供了一种耗时更少的技术。没有数据表明,现有的哪些应用程序最适合用于前庭神经鞘瘤(VS)。本研究旨在比较三种不同的 SAVST 用于测量 VS 的可重复性和可用性。

研究设计

三种 SAVST 的实验比较。

设置

三级颅底单位。

患者

24 例单侧 VS 患者,行 T1 加权钆增强 MRI 成像。

干预

进行重复测量以确定观察者内和观察者间的一致性。使用三种不同的 SAVST 重复此操作。

主要观察指标

1)观察者内和观察者间的组内相关系数(ICC)、重复性系数(RC)和最小可检测差异的相对百分比(%SDD)。2)通过每个肿瘤测量所需的平均步骤数和时间以及需要手动编辑的病例比例来确定可用性。

结果

与 AW VolumeShare 相比,SliceOmatic 和 OleaSphere 的观察者内 ICC 明显更好(0.998 与 0.994,p < 0.05)。SliceOmatic(0.994)和 OleaSphere(0.989)的观察者间 ICC 也优于 AW VolumeShare(0.976),但这仅在 SliceOmatic 中具有统计学意义(p = 0.012)。SliceOmatic 的可用性较差,需要更多的手动编辑、时间和每个测量的单独步骤,但它的“分水岭分割”算法更擅长测量囊性或异质性肿瘤。

结论

这是第一项比较三种 SAVST 用于测量 VS 的研究。虽然 SliceOmatic 的重复性最高,但 Olea Sphere 结合了可比较的重复性、更好的可用性以及更高程度的自动化,因此被认为是常规临床实践中的最佳选择。

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