Toward Closing the Loop in Image-to-Image Conversion in Radiotherapy: A Quality Control Tool to Predict Synthetic Computed Tomography Hounsfield Unit Accuracy.

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY
Paolo Zaffino, Ciro Benito Raggio, Adrian Thummerer, Gabriel Guterres Marmitt, Johannes Albertus Langendijk, Anna Procopio, Carlo Cosentino, Joao Seco, Antje Christin Knopf, Stefan Both, Maria Francesca Spadea
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引用次数: 0

Abstract

In recent years, synthetic Computed Tomography (CT) images generated from Magnetic Resonance (MR) or Cone Beam Computed Tomography (CBCT) acquisitions have been shown to be comparable to real CT images in terms of dose computation for radiotherapy simulation. However, until now, there has been no independent strategy to assess the quality of each synthetic image in the absence of ground truth. In this work, we propose a Deep Learning (DL)-based framework to predict the accuracy of synthetic CT in terms of Mean Absolute Error (MAE) without the need for a ground truth (GT). The proposed algorithm generates a volumetric map as an output, informing clinicians of the predicted MAE slice-by-slice. A cascading multi-model architecture was used to deal with the complexity of the MAE prediction task. The workflow was trained and tested on two cohorts of head and neck cancer patients with different imaging modalities: 27 MR scans and 33 CBCT. The algorithm evaluation revealed an accurate HU prediction (a median absolute prediction deviation equal to 4 HU for CBCT-based synthetic CTs and 6 HU for MR-based synthetic CTs), with discrepancies that do not affect the clinical decisions made on the basis of the proposed estimation. The workflow exhibited no systematic error in MAE prediction. This work represents a proof of concept about the feasibility of synthetic CT evaluation in daily clinical practice, and it paves the way for future patient-specific quality assessment strategies.

放射治疗中图像到图像转换的闭环:预测合成计算机断层扫描霍斯菲尔德单元精度的质量控制工具。
近年来,从磁共振(MR)或锥束计算机断层扫描(CBCT)采集生成的合成计算机断层扫描(CT)图像已被证明在放射模拟剂量计算方面与真实CT图像相当。然而,到目前为止,还没有独立的策略来评估在缺乏地面真实情况下每个合成图像的质量。在这项工作中,我们提出了一个基于深度学习(DL)的框架,在不需要基础真值(GT)的情况下,根据平均绝对误差(MAE)预测合成CT的准确性。提出的算法生成一个体积图作为输出,告知临床医生预测的MAE切片。采用级联多模型体系结构来处理MAE预测任务的复杂性。该工作流程在两组不同成像方式的头颈癌患者中进行了培训和测试:27例磁共振扫描和33例CBCT。算法评估显示了准确的HU预测(基于cbct的合成ct的中位数绝对预测偏差等于4 HU,基于mr的合成ct的中位数绝对预测偏差等于6 HU),差异不影响根据所提出的估计做出的临床决策。该工作流在MAE预测中无系统误差。这项工作证明了综合CT评估在日常临床实践中的可行性,并为未来针对患者的质量评估策略铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
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