Literature DB >> 35267649

A Novel and Automated Approach to Classify Radiation Induced Lung Tissue Damage on CT Scans.

Adam Szmul1, Edward Chandy1,2,3, Catarina Veiga1, Joseph Jacob1,4, Alkisti Stavropoulou1, David Landau3, Crispin T Hiley3,5, Jamie R McClelland1.   

Abstract

Radiation-induced lung damage (RILD) is a common side effect of radiotherapy (RT). The ability to automatically segment, classify, and quantify different types of lung parenchymal change is essential to uncover underlying patterns of RILD and their evolution over time. A RILD dedicated tissue classification system was developed to describe lung parenchymal tissue changes on a voxel-wise level. The classification system was automated for segmentation of five lung tissue classes on computed tomography (CT) scans that described incrementally increasing tissue density, ranging from normal lung (Class 1) to consolidation (Class 5). For ground truth data generation, we employed a two-stage data annotation approach, akin to active learning. Manual segmentation was used to train a stage one auto-segmentation method. These results were manually refined and used to train the stage two auto-segmentation algorithm. The stage two auto-segmentation algorithm was an ensemble of six 2D Unets using different loss functions and numbers of input channels. The development dataset used in this study consisted of 40 cases, each with a pre-radiotherapy, 3-, 6-, 12-, and 24-month follow-up CT scans (n = 200 CT scans). The method was assessed on a hold-out test dataset of 6 cases (n = 30 CT scans). The global Dice score coefficients (DSC) achieved for each tissue class were: Class (1) 99% and 98%, Class (2) 71% and 44%, Class (3) 56% and 26%, Class (4) 79% and 47%, and Class (5) 96% and 92%, for development and test subsets, respectively. The lowest values for the test subsets were caused by imaging artefacts or reflected subgroups that occurred infrequently and with smaller overall parenchymal volumes. We performed qualitative evaluation on the test dataset presenting manual and auto-segmentation to a blinded independent radiologist to rate them as 'acceptable', 'minor disagreement' or 'major disagreement'. The auto-segmentation ratings were similar to the manual segmentation, both having approximately 90% of cases rated as acceptable. The proposed framework for auto-segmentation of different lung tissue classes produces acceptable results in the majority of cases and has the potential to facilitate future large studies of RILD.

Entities:  

Keywords:  deep learning; lung segmentation; lung tissue classification; radiation induced lung damage

Year:  2022        PMID: 35267649      PMCID: PMC8909378          DOI: 10.3390/cancers14051341

Source DB:  PubMed          Journal:  Cancers (Basel)        ISSN: 2072-6694            Impact factor:   6.639


  36 in total

1.  Building a reference multimedia database for interstitial lung diseases.

Authors:  Adrien Depeursinge; Alejandro Vargas; Alexandra Platon; Antoine Geissbuhler; Pierre-Alexandre Poletti; Henning Müller
Journal:  Comput Med Imaging Graph       Date:  2011-07-30       Impact factor: 4.790

2.  Driving the Improvement of Lung Cancer Prognosis.

Authors:  Wenhua Liang; Jun Liu; Jianxing He
Journal:  Cancer Cell       Date:  2020-10-12       Impact factor: 31.743

3.  Toxicity criteria of the Radiation Therapy Oncology Group (RTOG) and the European Organization for Research and Treatment of Cancer (EORTC)

Authors:  J D Cox; J Stetz; T F Pajak
Journal:  Int J Radiat Oncol Biol Phys       Date:  1995-03-30       Impact factor: 7.038

4.  Longitudinal perceptions of prognosis and goals of therapy in patients with metastatic non-small-cell lung cancer: results of a randomized study of early palliative care.

Authors:  Jennifer S Temel; Joseph A Greer; Sonal Admane; Emily R Gallagher; Vicki A Jackson; Thomas J Lynch; Inga T Lennes; Connie M Dahlin; William F Pirl
Journal:  J Clin Oncol       Date:  2011-05-09       Impact factor: 44.544

5.  Lung texture in serial thoracic computed tomography scans: correlation of radiomics-based features with radiation therapy dose and radiation pneumonitis development.

Authors:  Alexandra Cunliffe; Samuel G Armato; Richard Castillo; Ngoc Pham; Thomas Guerrero; Hania A Al-Hallaq
Journal:  Int J Radiat Oncol Biol Phys       Date:  2015-02-07       Impact factor: 7.038

6.  Quantitative Analysis of Radiation-Associated Parenchymal Lung Change.

Authors:  Edward Chandy; Adam Szmul; Alkisti Stavropoulou; Joseph Jacob; Catarina Veiga; David Landau; James Wilson; Sarah Gulliford; John D Fenwick; Maria A Hawkins; Crispin Hiley; Jamie R McClelland
Journal:  Cancers (Basel)       Date:  2022-02-14       Impact factor: 6.639

Review 7.  Thoracic Radiation Normal Tissue Injury.

Authors:  Charles B Simone
Journal:  Semin Radiat Oncol       Date:  2017-10       Impact factor: 5.934

8.  Changes of lung parenchyma density following high dose radiation therapy for thoracic carcinomas - an automated analysis of follow up CT scans.

Authors:  Christina Schröder; Rita Engenhart-Cabillic; Sven Kirschner; Eyck Blank; André Buchali
Journal:  Radiat Oncol       Date:  2019-04-29       Impact factor: 3.481

Review 9.  Radiation-induced lung injury: current evidence.

Authors:  Marisol Arroyo-Hernández; Federico Maldonado; Francisco Lozano-Ruiz; Wendy Muñoz-Montaño; Mónica Nuñez-Baez; Oscar Arrieta
Journal:  BMC Pulm Med       Date:  2021-01-06       Impact factor: 3.317

10.  Correlation of normal lung density changes with dose after stereotactic body radiotherapy (SBRT) for early stage lung cancer.

Authors:  Karine A Al Feghali; Qixue Charles Wu; Suneetha Devpura; Chang Liu; Ahmed I Ghanem; Ning Winston Wen; Munther Ajlouni; Michael J Simoff; Benjamin Movsas; Indrin J Chetty
Journal:  Clin Transl Radiat Oncol       Date:  2020-02-11
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  1 in total

1.  Radiation Therapy in Thoracic Tumors: Recent Trends and Current Issues.

Authors:  Laura Cella; Giuseppe Palma
Journal:  Cancers (Basel)       Date:  2022-05-30       Impact factor: 6.575

  1 in total

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