Abstract 1267P
Background
Low dosage computer tomography (LDCT) is widely used to detect early-stage lung cancer, but concerns regarding accuracy and overdiagnosis persist. To enhance LDCT diagnosis using non-invasive molecular features, we developed a combinatorial model to distinguish between malignant and benign pulmonary nodules.
Methods
In a prospective cohort of 608 participants with pulmonary nodules, we performed targeted methylation sequencing and protein level measurement using Proximity Extension Assay. Radiomics features were extracted from LDCT images of 448 participants. A machine learning classifier, incorporating a transformer model and deep neuron network models, was trained and tested, by integrating molecular and image features.
Results
A total of 368 samples (184 benign and 184 malignant) with matched sex and age were randomly selected as the training set. The remaining 81 benign and 159 malignant samples were used as the test set. The methylation-only model had an AUC of 0.805 [95% CI 0.755-0.852], the protein-only model had an AUC of 0.816 [0.768-0.860], and the radiomics-only model achieved an AUC of 0.865 [0.812-0.912]. A combination of methylation and radiomics features generated an enhanced model with an AUC of 0.884 [0.840-0.927] (sensitivity = 0.824 [0.744-0.883], specificity = 0.772 [0.641-0.865]), outperforming models based on other combinations of two features. Integrating protein markers further improved the model (AUC = 0.895 [0.845-0.934]), with both sensitivity (0.849 [0.774-0.905]) and specificity (0.842 [0.721-0.918]) showing significant enhancements. The combinatorial model performed well across sample groups with different nodule sizes, particularly for samples with nodules no larger than 10 mm.
Conclusions
This study integrated DNA methylation, protein, and radiomics features to construct a robust combinatorial model with optimal performance, providing potential clinical utility for the management of pulmonary nodules.
Clinical trial identification
Editorial acknowledgement
Legal entity responsible for the study
The authors.
Funding
Has not received any funding.
Disclosure
W. Li, Q. He, Y. Zhang: Financial Interests, Personal, Full or part-time Employment: Singlera Genomics Inc. Z. Su: Financial Interests, Personal, Full or part-time Employment: Singlera Genomics Ltd. R. Liu: Financial Interests, Personal, Officer: Singlera Genomics Inc. All other authors have declared no conflicts of interest.
Resources from the same session
457P - Disparities in receipt of CDK4/6 inhibitors with endocrine therapy as therapy for hormone receptor-positive, HER2-negative metastatic breast cancer in the real-world setting
Presenter: Gretchen Kimmick
Session: Poster session 04
458P - Metastatic breast cancer: How and how often do we communicate? Results from an Italian national survey
Presenter: Camilla Lisanti
Session: Poster session 04
460P - Impact of fulvestrant utilization on prognostic outcome among patients with HR+ve/HER2-ve metastatic breast cancer: Results from a real-world dataset
Presenter: Shaheenah Dawood
Session: Poster session 04
462P - Health outcomes of treatment sequences with eribulin or other single agents’ chemotherapy for treating relapsed metastatic HER2-negative breast cancer
Presenter: Simone Rivolo
Session: Poster session 04
463P - Impact of two waves of Sars-Cov-2 outbreak on the clinical presentation and outcomes of newly referred breast cancer cases at AP-HP: A retrospective multicenter cohort study
Presenter: Sonia Priou
Session: Poster session 04
464P - Developing a prognostic risk stratification model and treatment options for HER2-positive breast cancer brain metastasis
Presenter: JiaXin Chen
Session: Poster session 04
465P - Reporting of older subgroups enrolled to registration breast cancer trials, 2012-2021
Presenter: Colm Mac Eochagain
Session: Poster session 04