图像归一化技术的多管齐下评价

Tianqing Li, Leihao Wei, William Hsu
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引用次数: 1

摘要

虽然定量图像特征(放射组学)可以作为疾病进展的信息指标,但它们对获取和重建的变化很敏感。先前的研究已经证明了使用逐像素度量(例如,均方误差)和定性阅读器研究规范化异构扫描的能力。然而,这些技术的普遍性和规范化对下游任务(例如分类)的影响尚未得到充分研究。我们提出了一个多管齐下的评估,通过评估图像归一化技术,使用1)每像素图像质量和感知指标,2)放射学特征的可变性,以及3)使用机器学习(ML)模型的任务性能差异。我们评估了先前报道的基于3D生成对抗网络(GAN)的方法,研究了其在不同机构获得的具有不同剂量水平和重建核的低剂量计算机断层扫描(CT)扫描上的性能。虽然3D GAN取得了优异的度量结果,但其对定量图像特征和下游任务性能的影响并没有导致普遍的改进。这些结果表明,CT采集和重建参数及其对放射学特征和ML模型性能的影响之间存在更复杂的关系,仅使用逐像素指标无法完全捕获这些特征。我们的方法提供了标准化效果的更全面的画面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multi-Pronged Evaluation For Image Normalization Techniques
While quantitative image features (radiomic) can be employed as informative indicators of disease progression, they are sensitive to variations in acquisition and reconstruction. Prior studies have demonstrated the ability to normalize heterogeneous scans using per-pixel metrics (e.g., mean squared error) and qualitative reader studies. However, the generalizability of these techniques and the impact of normalization on downstream tasks (e.g., classification) have been understudied. We present a multi-pronged evaluation by assessing image normalization techniques using 1) per-pixel image quality and perceptual metrics, 2) variability in radiomic features, and 3) task performance differences using a machine learning (ML) model. We evaluated a previously reported 3D generative adversarial network-based (GAN) approach, investigating its performance on low-dose computed tomography (CT) scans acquired at a different institution with varying dose levels and reconstruction kernels. While the 3D GAN achieved superior metric results, its impact on quantitative image features and downstream task performance did not result in universal improvement. These results suggest a more complicated relationship between CT acquisition and reconstruction parameters and their effect on radiomic features and ML model performance, which are not fully captured using per-pixel metrics alone. Our approach provides a more comprehensive picture of the effect of normalization.
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