Chest
Volume 154, Issue 3, September 2018, Pages 491-500
Journal home page for Chest

Original Research: Lung Cancer
Assessment of Plasma Proteomics Biomarker’s Ability to Distinguish Benign From Malignant Lung Nodules: Results of the PANOPTIC (Pulmonary Nodule Plasma Proteomic Classifier) Trial

https://doi.org/10.1016/j.chest.2018.02.012Get rights and content
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Background

Lung nodules are a diagnostic challenge, with an estimated yearly incidence of 1.6 million in the United States. This study evaluated the accuracy of an integrated proteomic classifier in identifying benign nodules in patients with a pretest probability of cancer (pCA) ≤ 50%.

Methods

A prospective, multicenter observational trial of 685 patients with 8- to 30-mm lung nodules was conducted. Multiple reaction monitoring mass spectrometry was used to measure the relative abundance of two plasma proteins, LG3BP and C163A. Results were integrated with a clinical risk prediction model to identify likely benign nodules. Sensitivity, specificity, and negative predictive value were calculated. Estimates of potential changes in invasive testing had the integrated classifier results been available and acted on were made.

Results

A subgroup of 178 patients with a clinician-assessed pCA ≤ 50% had a 16% prevalence of lung cancer. The integrated classifier demonstrated a sensitivity of 97% (CI, 82-100), a specificity of 44% (CI, 36-52), and a negative predictive value of 98% (CI, 92-100) in distinguishing benign from malignant nodules. The classifier performed better than PET, validated lung nodule risk models, and physician cancer probability estimates (P < .001). If the integrated classifier results were used to direct care, 40% fewer procedures would be performed on benign nodules, and 3% of malignant nodules would be misclassified.

Conclusions

When used in patients with lung nodules with a pCA ≤ 50%, the integrated classifier accurately identifies benign lung nodules with good performance characteristics. If used in clinical practice, invasive procedures could be reduced by diverting benign nodules to surveillance.

Trial Registry

ClinicalTrials.gov; No.: NCT01752114; URL: www.clinicaltrials.gov).

Key Words

biomarker
diagnosis
lung cancer
proteomics
pulmonary nodules
risk models

Abbreviations

AUC
area under the receiver-operating characteristic curve
NPV
negative predictive value
pCA
probability of cancer
TTNA
transthoracic needle biopsy
VA
Veterans Affairs

Cited by (0)

Drs Silvestri and Tanner contributed equally to this article.

FUNDING/SUPPORT: Integrated Diagnostics provided funding for the study as well as laboratory and biostatistical support.

A list of investigators and coordinators in the PANOPTIC (Pulmonary Nodule Plasma Proteomic Classifier) trial is provided in the supplementary material.