Literature DB >> 29209915

Classification of early stage non-small cell lung cancers on computed tomographic images into histological types using radiomic features: interobserver delineation variability analysis.

Akihiro Haga1, Wataru Takahashi2, Shuri Aoki2, Kanabu Nawa2, Hideomi Yamashita2, Osamu Abe2, Keiichi Nakagawa2.   

Abstract

Radiomics, which involves the extraction of large numbers of quantitative features from medical images, has attracted attention in cancer research. In radiomics analysis, tumor segmentation is a crucial step. In this study, we evaluated the potential application of radiomics for predicting the histology of early stage non-small cell lung cancer (NSCLC) by analyzing interobserver variability in tumor delineation. Forty patient datasets were included in this study, 21 involving adenocarcinomas and 19 involving squamous cell carcinomas. All patients underwent stereotactic body radiotherapy treatment. In total, 476 features were extracted from each dataset, representing treatment planning, computed tomography images, and gross tumor volume (GTV). The definition of GTV can significantly affect the histology prediction. Therefore, in the present study, the effect of interobserver tumor delineation variability on radiomic features was evaluated by preparing 4 volumes of interest (VOIs) for each patient, as follows: the original GTV (which was delineated at treatment planning); two GTVs delineated retrospectively by radiation oncologists; and a semi-automatic GTV contoured by a medical physicist. Radiomic features extracted from each VOI were then analyzed using a naïve Bayesian model. Area-under-the-curve (AUC) analysis showed that interobserver variability in delineation is a significant factor in radiomics performance. Nevertheless, with 8 selected features, AUC values averaged over the VOIs were high (0.725 ± 0.070). The present study indicated that radiomics has potential for predicting early stage NSCLC histology despite variability in delineation. The high prediction accuracy implies that noninvasive histology evaluation by radiomics is a promising clinical application.

Entities:  

Keywords:  Histology; Machine learning; Non-small-cell lung cancer (NSCLC); Prediction; Radiomics

Mesh:

Year:  2017        PMID: 29209915     DOI: 10.1007/s12194-017-0433-2

Source DB:  PubMed          Journal:  Radiol Phys Technol        ISSN: 1865-0333


  20 in total

1.  AI-based applications in hybrid imaging: how to build smart and truly multi-parametric decision models for radiomics.

Authors:  Isabella Castiglioni; Francesca Gallivanone; Paolo Soda; Michele Avanzo; Joseph Stancanello; Marco Aiello; Matteo Interlenghi; Marco Salvatore
Journal:  Eur J Nucl Med Mol Imaging       Date:  2019-07-11       Impact factor: 9.236

2.  Lung cancer histology classification from CT images based on radiomics and deep learning models.

Authors:  Panagiotis Marentakis; Pantelis Karaiskos; Vassilis Kouloulias; Nikolaos Kelekis; Stylianos Argentos; Nikolaos Oikonomopoulos; Constantinos Loukas
Journal:  Med Biol Eng Comput       Date:  2021-01-07       Impact factor: 2.602

3.  Radiomics analysis of [18F]-fluoro-2-deoxyglucose positron emission tomography for the prediction of cervical lymph node metastasis in tongue squamous cell carcinoma.

Authors:  Takaharu Kudoh; Akihiro Haga; Keiko Kudoh; Akira Takahashi; Motoharu Sasaki; Yasusei Kudo; Hitoshi Ikushima; Youji Miyamoto
Journal:  Oral Radiol       Date:  2022-03-07       Impact factor: 1.852

Review 4.  Radiomics in breast MRI: current progress toward clinical application in the era of artificial intelligence.

Authors:  Hiroko Satake; Satoko Ishigaki; Rintaro Ito; Shinji Naganawa
Journal:  Radiol Med       Date:  2021-10-26       Impact factor: 3.469

5.  MRI-Based Radiomics Differentiates Skull Base Chordoma and Chondrosarcoma: A Preliminary Study.

Authors:  Erika Yamazawa; Satoshi Takahashi; Masahiro Shin; Shota Tanaka; Wataru Takahashi; Takahiro Nakamoto; Yuichi Suzuki; Hirokazu Takami; Nobuhito Saito
Journal:  Cancers (Basel)       Date:  2022-07-03       Impact factor: 6.575

6.  Radiomics for Classifying Histological Subtypes of Lung Cancer Based on Multiphasic Contrast-Enhanced Computed Tomography.

Authors:  Linning E; Lin Lu; Li Li; Hao Yang; Lawrence H Schwartz; Binsheng Zhao
Journal:  J Comput Assist Tomogr       Date:  2019 Mar/Apr       Impact factor: 1.826

7.  Radiomics-Based Features for Prediction of Histological Subtypes in Central Lung Cancer.

Authors:  Huanhuan Li; Long Gao; He Ma; Dooman Arefan; Jiachuan He; Jiaqi Wang; Hu Liu
Journal:  Front Oncol       Date:  2021-04-29       Impact factor: 6.244

8.  Improving the Subtype Classification of Non-small Cell Lung Cancer by Elastic Deformation Based Machine Learning.

Authors:  Yang Gao; Fan Song; Peng Zhang; Jian Liu; Jingjing Cui; Yingying Ma; Guanglei Zhang; Jianwen Luo
Journal:  J Digit Imaging       Date:  2021-05-07       Impact factor: 4.903

Review 9.  Radiomics as a personalized medicine tool in lung cancer: Separating the hope from the hype.

Authors:  Isabella Fornacon-Wood; Corinne Faivre-Finn; James P B O'Connor; Gareth J Price
Journal:  Lung Cancer       Date:  2020-06-02       Impact factor: 5.705

10.  A subregion-based positron emission tomography/computed tomography (PET/CT) radiomics model for the classification of non-small cell lung cancer histopathological subtypes.

Authors:  Hui Shen; Ling Chen; Kanfeng Liu; Kui Zhao; Jingsong Li; Lijuan Yu; Hongwei Ye; Wentao Zhu
Journal:  Quant Imaging Med Surg       Date:  2021-07
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