UPDATE FROM THE LUNGSCREEN WA PROJECT - A FEASABILITY STUDY OF LOW-DOSE CT LUNG CANCER SCREENING OF HIGH-RISK EVER SMOKERS IN AUSTRALIA

Respirology ◽  
2017 ◽  
Vol 22 ◽  
pp. 64-65
2020 ◽  
Vol 38 (15_suppl) ◽  
pp. e19177-e19177
Author(s):  
Merin Jose ◽  
Rajesh Desai

e19177 Background: Lung cancer is the leading cause of cancer deaths in the United States with only 15% alive 5 years after diagnosis. In 2013, USPSTF recommended annual screening for LDCT in high risk individuals. Studies had shown a 20% lower mortality (NELSON trial showed significantly lower lung cancer mortality) with LDCT screening. We aimed to assess the extent to which the guideline for lung cancer screening is being adopted in a community clinic. Methods: A retrospective review of electronic medical record of patients aged 55-80 years with no history of lung cancer who visited a primary care provider in a community clinic in New Jersey from October 2014- December 2019 was done. All records with any form of documentation of smoking were identified electronically. The records of those meeting the criteria (30 pack-year smoking history and currently smoking or have quit within the past 15 years) were reviewed manually to check 1) whether they are eligible for screening, 2) if eligible whether low dose CT has been recommended by the provider and 3) once recommended has it been done and followed by the patients. Results: 359 individuals with documented smoking history were identified. Of those 38.8 % (139/359) had a proper documentation (includes both PPD and number of years of smoking) of smoking history based on which high risk individuals could be identified. Of those 37 individuals met the criteria for lung cancer screening. 62% (23/37) had CT chest ordered at some point of time (16.2% for a different indication and the rest for lung cancer screening). Only 52.2% (12/23) of the patients followed the recommendations and got a LDCT done. Among those 50% (6/12) had follow up CT, 50 % (3/6) of those did it on a regular annual basis while the rest 50% (3/6) did it irregularly. 3 patients followed the annual CT screening for lung cancer. Conclusions: Based on these we note that almost half a decade since the recommendation has been established only a small proportion received the care and a still smaller minority followed it. It reflects the dearth of information regarding the guideline among providers and the lack of awareness of the need to follow among patients. This puts forward need for further interventions for implementation of the guidelines at all levels of care for lung cancer prevention. Measures include analyzing the areas of deficiency through questionnaires for patients and providers. Creating awareness on the need for accurate documentation of smoking history and the impact it can have on care delivered. Educating patients about the benefits in health outcome by following the recommendations.


Thorax ◽  
2017 ◽  
Vol 72 (10) ◽  
pp. 912-918 ◽  
Author(s):  
Kate Brain ◽  
Ben Carter ◽  
Kate J Lifford ◽  
Olivia Burke ◽  
Anand Devaraj ◽  
...  

Lung ◽  
2012 ◽  
Vol 190 (6) ◽  
pp. 621-628 ◽  
Author(s):  
M. Pallin ◽  
S. Walsh ◽  
M. F. O’Driscoll ◽  
C. Murray ◽  
A. Cahalane ◽  
...  

2021 ◽  
Author(s):  
Babak Haghighi ◽  
Hannah Horng ◽  
Peter B Noël ◽  
Eric Cohen ◽  
Lauren Pantalone ◽  
...  

Abstract Rationale: High-throughput extraction of radiomic features from low-dose CT scans can characterize the heterogeneity of the lung parenchyma and potentially aid in identifying subpopulations that may have higher risk of lung diseases, such as COPD, and lung cancer due to inflammation or obstruction of the airways. We aim to determine the feasibility a lung radiomics phenotyping approach in a lung cancer screening cohort, while quantifying the effect of different CT reconstruction algorithms on phenotype robustness. Methods: We identified low-dose CT scans (n = 308) acquired with Siemens Healthineers scanners from patients who completed low-dose CT within our lung cancer screening program between 2015-2018 and had two different sets of image reconstructions kernel available (i.e., medium (I30f), sharp (I50f)) for the same acquisition. Following segmentation of the lung field, a total of 26 radiomic features were extracted from the entire 3D lung-field using a previously validated fully-automated lattice-based software pipeline, adapted for low-dose CT scans. The features extracted included gray-level histogram, co-occurrence, and run-length descriptors. Each feature was averaged for each scan within a range of lattice window sizes (W) ranging from 4-20mm. The extracted imaging features from both datasets were harmonized to correct for differences in image acquisition parameters. Subsequently, unsupervised hierarchal clustering was applied on the extracted features to identify distinct phenotypic patterns of the lung parenchyma, where consensus clustering was used to identify the optimal number of clusters (K = 2). Differences between? phenotypes for demographic and clinical covariates including sex, age, BMI, pack-years of smoking, Lung-RADS and cancer diagnosis were assessed for each phenotype cluster, and then compared across clusters for the two different CT reconstruction algorithms using the cluster entanglement metric, where a lower entanglement coefficient corresponds to good cluster alignment. Furthermore, an independent set of low-dose CT scans (n = 88) from patients with available pulmonary function data on lung obstruction were analyzed using the identified optimal clusters to assess associations to lung obstruction and validate the lung phenotyping paradigm. Results: Heatmaps generated by radiomic features identified two distinct lung parenchymal phenotype patterns across different feature extraction window sizes, for both reconstruction algorithms (P < 0.05 with K = 2). Associations of radiomic-based clusters with clinical covariates showed significant difference for BMI and pack-years of smoking (P < 0.05) for both reconstruction kernels. Radiomic phenotype patterns where similar across the two reconstructed kernels, specifically when smaller window sizes (W=4 and 8mm) were used for radiomic feature extraction, as deemed by their entanglement coefficient. Validation of clustering approaches using cluster mapping for the independent sample with lung obstruction also showed two statistically significant phenotypes (P < 0.05) with significant difference for BMI and smoking pack-years.ConclusionsRadiomic analysis can be used to characterize lung parenchymal phenotypes from low-dose CT scans, which appear reproducible for different reconstruction kernels. Further work should seek to evaluate the effect of additional CT acquisition parameters and validate these phenotypes in characterizing lung cancer screening populations, to potentially better stratify disease patterns and cancer risk.


Author(s):  
Olivier Leleu ◽  
Damien Basille ◽  
Marianne Auquier ◽  
Caroline Clarot ◽  
Estelle Hoguet ◽  
...  

Author(s):  
Yuta Azuma ◽  
Yoshiki Kawata ◽  
Noboru Niki ◽  
Issei Imoto ◽  
Masahiko Kusumoto ◽  
...  

2018 ◽  
Vol 7 (3) ◽  
pp. 281-287 ◽  
Author(s):  
Marjolein A. Heuvelmans ◽  
Matthijs Oudkerk

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