利用深度多任务学习改进腕骨X光片的自动质量控制。

Guy Hembroff, Chad Klochko, Joseph Craig, Harikrishnan Changarnkothapeecherikkal, Richard Q Loi
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引用次数: 0

摘要

放射质量控制是放射学工作流程中不可或缺的组成部分。在这项研究中,我们开发了一个为自动质量控制量身定制的卷积神经网络模型,专门用于检测和分类腕部放射照片的关键属性,包括投影、侧位(基于右/左标记)以及是否存在硬件和/或石膏。该模型的主要目的是确保结果与图像申请元数据一致,以通过质量评估。我们的多任务深度学习模型基于 DenseNet 121 架构,使用来自 2591 名患者的 6283 张腕部 X 光片数据集,在投影分类(F1 得分为 97.23%)、石膏检测(F1 得分为 97.70%)和手术硬件识别(F1 得分为 92.27%)方面取得了很高的准确率。该模型在侧位标记检测方面的性能较低(F1 分数为 82.52%),尤其是对于部分可见或截断的标记。本文对我们模型的性能进行了全面评估,突出强调了其优势、局限性以及在开发和实施过程中遇到的挑战。此外,我们还概述了计划中的未来研究方向,旨在完善和扩展该模型的功能,以提高放射质量控制的临床实用性和患者护理水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Improved Automated Quality Control of Skeletal Wrist Radiographs Using Deep Multitask Learning.

Improved Automated Quality Control of Skeletal Wrist Radiographs Using Deep Multitask Learning.

Radiographic quality control is an integral component of the radiology workflow. In this study, we developed a convolutional neural network model tailored for automated quality control, specifically designed to detect and classify key attributes of wrist radiographs including projection, laterality (based on the right/left marker), and the presence of hardware and/or casts. The model's primary objective was to ensure the congruence of results with image requisition metadata to pass the quality assessment. Using a dataset of 6283 wrist radiographs from 2591 patients, our multitask-capable deep learning model based on DenseNet 121 architecture achieved high accuracy in classifying projections (F1 Score of 97.23%), detecting casts (F1 Score of 97.70%), and identifying surgical hardware (F1 Score of 92.27%). The model's performance in laterality marker detection was lower (F1 Score of 82.52%), particularly for partially visible or cut-off markers. This paper presents a comprehensive evaluation of our model's performance, highlighting its strengths, limitations, and the challenges encountered during its development and implementation. Furthermore, we outline planned future research directions aimed at refining and expanding the model's capabilities for improved clinical utility and patient care in radiographic quality control.

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