» Articles » PMID: 29285518

Accounting for Reconstruction Kernel-induced Variability in CT Radiomic Features Using Noise Power Spectra

Overview
Specialty Radiology
Date 2017 Dec 30
PMID 29285518
Citations 23
Authors
Affiliations
Soon will be listed here.
Abstract

Large variability in computed tomography (CT) radiomics feature values due to CT imaging parameters can have subsequent implications on the prognostic or predictive significance of these features. Here, we investigated the impact of pitch, dose, and reconstruction kernel on CT radiomic features. Moreover, we introduced correction factors to reduce feature variability introduced by reconstruction kernels. The credence cartridge radiomics and American College of Radiology (ACR) phantoms were scanned on five different scanners. ACR phantom was used for 3-D noise power spectrum (NPS) measurements to quantify correlated noise. The coefficient of variation (COV) was used as the variability assessment metric. The variability in texture features due to different kernels was reduced by applying the NPS peak frequency and region of interest (ROI) maximum intensity as correction factors. Most texture features were dose independent but were strongly kernel dependent, which is demonstrated by a significant shift in NPS peak frequency among kernels. Percentage improvement in robustness was calculated for each feature from original and corrected %COV values. Percentage improvements in robustness of 19 features were in the range of 30% to 78% after corrections. We show that NPS peak frequency and ROI maximum intensity can be used as correction factors to reduce variability in CT texture feature values due to reconstruction kernels.

Citing Articles

Annotated test-retest dataset of lung cancer CT scan images reconstructed at multiple imaging parameters.

Zhao B, Dercle L, Yang H, Riely G, Kris M, Schwartz L Sci Data. 2024; 11(1):1259.

PMID: 39567508 PMC: 11579286. DOI: 10.1038/s41597-024-04085-3.


Magnetic Resonance-Guided Cancer Therapy Radiomics and Machine Learning Models for Response Prediction.

Fajemisin J, Gonzalez G, Rosenberg S, Ullah G, Redler G, Latifi K Tomography. 2024; 10(9):1439-1454.

PMID: 39330753 PMC: 11435563. DOI: 10.3390/tomography10090107.


Rank acquisition impact on radiomics estimation (AсquIRE) in chest CT imaging: A retrospective multi-site, multi-use-case study.

Cherezov D, Viswanathan V, Fu P, Gupta A, Madabhushi A Comput Methods Programs Biomed. 2024; 244:107990.

PMID: 38194767 PMC: 10872259. DOI: 10.1016/j.cmpb.2023.107990.


Nuclear medicine radiomics in digestive system tumors: Concept, applications, challenges, and future perspectives.

Huang W, Tao Z, Younis M, Cai W, Kang L View (Beijing). 2024; 4(6).

PMID: 38179181 PMC: 10766416. DOI: 10.1002/VIW.20230032.


Radiomic phenotyping of the lung parenchyma in a lung cancer screening cohort.

Haghighi B, Horng H, Noel P, Cohen E, Pantalone L, Vachani A Sci Rep. 2023; 13(1):2040.

PMID: 36739358 PMC: 9899203. DOI: 10.1038/s41598-023-29058-1.


References
1.
Oliver J, Budzevich M, Zhang G, Dilling T, Latifi K, Moros E . Variability of Image Features Computed from Conventional and Respiratory-Gated PET/CT Images of Lung Cancer. Transl Oncol. 2015; 8(6):524-34. PMC: 4700295. DOI: 10.1016/j.tranon.2015.11.013. View

2.
Bagher-Ebadian H, Siddiqui F, Liu C, Movsas B, Chetty I . On the impact of smoothing and noise on robustness of CT and CBCT radiomics features for patients with head and neck cancers. Med Phys. 2017; 44(5):1755-1770. DOI: 10.1002/mp.12188. View

3.
Kim H, Park C, Lee M, Park S, Song Y, Lee J . Impact of Reconstruction Algorithms on CT Radiomic Features of Pulmonary Tumors: Analysis of Intra- and Inter-Reader Variability and Inter-Reconstruction Algorithm Variability. PLoS One. 2016; 11(10):e0164924. PMC: 5065199. DOI: 10.1371/journal.pone.0164924. View

4.
Friedman S, Fung G, Siewerdsen J, Tsui B . A simple approach to measure computed tomography (CT) modulation transfer function (MTF) and noise-power spectrum (NPS) using the American College of Radiology (ACR) accreditation phantom. Med Phys. 2013; 40(5):051907. PMC: 3643984. DOI: 10.1118/1.4800795. View

5.
Lo P, Young S, Kim H, Brown M, McNitt-Gray M . Variability in CT lung-nodule quantification: Effects of dose reduction and reconstruction methods on density and texture based features. Med Phys. 2016; 43(8):4854. PMC: 4967078. DOI: 10.1118/1.4954845. View