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关于平滑和噪声对头部和颈部癌症患者 CT 和 CBCT 放射组学特征稳健性的影响。

On the impact of smoothing and noise on robustness of CT and CBCT radiomics features for patients with head and neck cancers.

机构信息

Department of Radiation Oncology, Henry Ford Hospital, Detroit, MI, USA.

Department of Physics, Oakland University, Rochester, MI, USA.

出版信息

Med Phys. 2017 May;44(5):1755-1770. doi: 10.1002/mp.12188. Epub 2017 Apr 17.

Abstract

PURPOSE

We investigated the characteristics of radiomics features extracted from planning CT (pCT) and cone beam CT (CBCT) image datasets acquired for 18 oropharyngeal cancer patients treated with fractionated radiation therapy. Images were subjected to smoothing, sharpening, and noise to evaluate changes in features relative to baseline datasets.

METHODS

Textural features were extracted from tumor volumes, contoured on pCT and CBCT images, according to the following eight different classes: intensity based histogram features (IBHF), gray level run length (GLRL), law's textural information (LAWS), discrete orthonormal stockwell transform (DOST), local binary pattern (LBP), two-dimensional wavelet transform (2DWT), Two dimensional Gabor filter (2DGF), and gray level co-occurrence matrix (GLCM). A total of 165 radiomics features were extracted. Images were post-processed prior to feature extraction using a Gaussian noise model with different signal-to-noise-ratios (SNR = 5, 10, 15, 20, 25, 35, 50, 75, 100, and 150). Gaussian filters with different cut off frequencies (varied discreetly from 0.0458 to 0.7321 cycles-mm ) were applied to image datasets. Effect of noise and smoothing on each extracted feature was quantified using mean absolute percent change (MAPC) between the respective values on post-processed and baseline images. The Fisher method for combining Welch P-values was used for tests of significance. Three comparisons were investigated: (a) Baseline pCT versus modified pCT (with given filter applied); (b) Baseline CBCT versus modified CBCT, and (c) Baseline and modified pCT versus baseline and modified CBCT.

RESULTS

Features extracted from CT and CBCT image datasets were robust to low-pass filtering (MAPC = 17.5%, pvalFisher¯ = 0.93 for CBCT and MAPC = 7.5%, pvalFisher¯ = 0.98 for pCT) and noise (MAPC = 27.1%, pvalFisher¯ =  0.89 for CBCT, and MAPC = 34.6%, pvalFisher¯ = 0.61 for pCT). Extracted features were significantly impacted (MAPC=187.7%, pvalFisher¯ < 0.0001 for CBCT, and MAPC = 180.6%, pvalFisher¯ < 0.01 for pCT) by LOG which is classified as a high-pass filter. Features most impacted by low pass filtering were LAWS (MAPC = 11.2%, pvalFisher¯ = 0.44), GLRL (MAPC = 9.7%, pvalFisher¯ = 0.70) and IBHF (MAPC = 21.7%, pvalFisher¯ = 0.83), for the pCT datasets, and LAWS (MAPC = 20.2%, pvalFisher¯ = 0.24), GLRL (MAPC = 14.5%, pvalFisher¯ = 0.44), and 2DGF (MAPC=16.3%, pvalFisher¯ = 0.52), for CBCT image datasets. For pCT datasets, features most impacted by noise were GLRL (MAPC = 29.7%, pvalFisher¯ = 0.06), LAWS (MAPC = 96.6%, pvalFisher¯ = 0.42), and GLCM (MAPC = 36.2%, pvalFisher¯ = 0.48), while the LBPF (MAPC = 5.2%, pvalFisher¯ = 0.99) was found to be relatively insensitive to noise. For CBCT datasets, GLRL (MAPC = 8.9%, pvalFisher¯ = 0.80) and LAWS (MAPC = 89.3%, pvalFisher¯ = 0.81) features were impacted by noise, while the LBPF (MAPC = 2.2%, pvalFisher¯ = 0.99) and DOST (MAPC = 13.7%, pvalFisher¯ = 0.98) features were noise insensitive. Apart from 15 features, no significant differences were observed for the remaining 150 textural features extracted from baseline pCT and CBCT image datasets (MAPC = 90.1%, pvalFisher¯ = 0.26).

CONCLUSIONS

Radiomics features extracted from planning CT and daily CBCT image datasets for head/neck cancer patients were robust to low-power Gaussian noise and low-pass filtering, but were impacted by high-pass filtering. Textural features extracted from CBCT and pCT image datasets were similar, suggesting interchangeability of pCT and CBCT for investigating radiomics features as possible biomarkers for outcome.

摘要

目的

我们研究了从 18 名接受分次放射治疗的口咽癌患者的计划 CT(pCT)和锥形束 CT(CBCT)图像数据集提取的放射组学特征的特征。对图像进行平滑、锐化和噪声处理,以评估特征相对于基线数据集的变化。

方法

根据以下 8 种不同类别,从肿瘤体积的 pCT 和 CBCT 图像上提取纹理特征:强度直方图特征(IBHF)、灰度游程长度(GLRL)、定律纹理信息(LAWS)、离散正交斯托克威尔变换(DOST)、局部二值模式(LBP)、二维小波变换(2DWT)、二维 Gabor 滤波器(2DGF)和灰度共生矩阵(GLCM)。共提取了 165 个放射组学特征。在特征提取之前,使用具有不同信噪比(SNR=5、10、15、20、25、35、50、75、100 和 150)的高斯噪声模型对图像进行后处理。应用不同截止频率(从 0.0458 到 0.7321 个周期/mm 离散变化)的高斯滤波器对图像数据集进行处理。使用均值绝对百分比变化(MAPC)量化噪声和平滑对每个提取特征的影响,即分别在处理后和基线图像上的相应值之间的差异。Fisher 方法用于组合 Welch P 值进行显著性检验。研究了三种比较:(a)基线 pCT 与经给定滤波器修改的 pCT;(b)基线 CBCT 与经修改的 CBCT,以及(c)基线和修改后的 pCT 与基线和修改后的 CBCT。

结果

从 CT 和 CBCT 图像数据集提取的特征对低通滤波(MAPC=17.5%,pvalFisher¯=0.93 用于 CBCT 和 MAPC=7.5%,pvalFisher¯=0.98 用于 pCT)和噪声(MAPC=27.1%,pvalFisher¯=0.89 用于 CBCT,MAPC=34.6%,pvalFisher¯=0.61 用于 pCT)具有鲁棒性。提取的特征受到显著影响(MAPC=187.7%,pvalFisher¯<0.0001 用于 CBCT,MAPC=180.6%,pvalFisher¯<0.01 用于 pCT)由 LOG 分类为高通滤波器。受低通滤波影响最大的特征是 LAWS(MAPC=11.2%,pvalFisher¯=0.44)、GLRL(MAPC=9.7%,pvalFisher¯=0.70)和 IBHF(MAPC=21.7%,pvalFisher¯=0.83),对于 pCT 数据集,以及 LAWS(MAPC=20.2%,pvalFisher¯=0.24)、GLRL(MAPC=14.5%,pvalFisher¯=0.44)和 2DGF(MAPC=16.3%,pvalFisher¯=0.52),对于 CBCT 图像数据集。对于 pCT 数据集,受噪声影响最大的特征是 GLRL(MAPC=29.7%,pvalFisher¯=0.06)、LAWS(MAPC=96.6%,pvalFisher¯=0.42)和 GLCM(MAPC=36.2%,pvalFisher¯=0.48),而 LBPF(MAPC=5.2%,pvalFisher¯=0.99)对噪声相对不敏感。对于 CBCT 数据集,GLRL(MAPC=8.9%,pvalFisher¯=0.80)和 LAWS(MAPC=89.3%,pvalFisher¯=0.81)特征受噪声影响,而 LBPF(MAPC=2.2%,pvalFisher¯=0.99)和 DOST(MAPC=13.7%,pvalFisher¯=0.98)特征对噪声不敏感。除了 15 个特征外,从基线 pCT 和 CBCT 图像数据集提取的其余 150 个纹理特征(MAPC=90.1%,pvalFisher¯=0.26)没有显著差异。

结论

从头颈部癌症患者的计划 CT 和日常 CBCT 图像数据集提取的放射组学特征对低功率高斯噪声和低通滤波具有鲁棒性,但对高通滤波具有敏感性。从 CBCT 和 pCT 图像数据集提取的纹理特征相似,提示 pCT 和 CBCT 可用于研究放射组学特征作为结果的可能生物标志物。

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