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The Development, Safety, and Feasibility of an Artificial Intelligence-Powered Platform (NodeAI) for Real-Time Prediction of Mediastinal Lymph Node Malignancy During Endobronchial Ultrasound Staging for Lung Cancer

S

St. Joseph's Healthcare Hamilton

Status

Enrolling

Conditions

Lung Cancer
Non Small Cell Lung Cancer

Treatments

Diagnostic Test: NodeAI
Diagnostic Test: Surgeon

Study type

Interventional

Funder types

Other

Identifiers

NCT06540196
NodeAI Feasibility

Details and patient eligibility

About

Lung cancer is the leading cause of annual cancer deaths globally, more than breast, prostate, and colon cancers combined. The staging of chest lymph nodes (LNs) is a crucial step in the lung cancer diagnostic pathway because it aids in treatment decisions - whether a patient is a candidate for lung resection, chemotherapy, radiation, or multimodal treatments. Endobronchial Ultrasound Transbronchial Needle Aspiration (EBUS-TBNA) is the current standard for chest nodal staging for non-small cell lung cancer (NSCLC), and guidelines mandate that Systematic Sampling (SS) of at least 3 chest LN stations be routinely performed for accurate staging. Unfortunately, EBUS-TBNA yields inaccurate results in 40% of patients, leading to misinformed treatment decisions. This proportion is much higher in patients with Triple Normal LNs [LNs that appear normal on computed tomography (CT) scans, positron emission tomography (PET) scans, and EBUS], which have been found to have a > 93% chance of being truly benign. This is because EBUS-TBNA is based on ultrasound, whose success highly depends on the skill of the person performing it (operator). When the operator makes an error, the entire procedure is jeopardized. This causes downstream delays in treatment due to repeated testing and ill-informed treatment decisions.

Over the past decade, the investigator has been conducting a series of research studies and trials: the development and validation of the Canada Lymph Node Score (CLNS) - a surgeon-derived semi-quantitative measure of LN malignancy; an Artificial Intelligence (AI)-based version of the CLNS to predict malignancy; and a fully autonomous AI that learned to predict malignancy directly from ultrasound images, to introduce AI to the decision-making pathway in NSCLC. This resulted in the creation of an AI-powered software to predict malignancy in mediastinal LNs of patients with lung cancer. The software is currently housed in cloud storage and its applications are latent - which means that LN images must be uploaded to the software, and results are received at a future time. In its current form, the software is not ready for clinical application due to this latency. In this project, the investigator aims to build a point-of-care device which will house the software (NodeAI) and deliver real-time results to the surgeon, and this device will be tested in a clinical trial.

Enrollment

600 estimated patients

Sex

All

Ages

18+ years old

Volunteers

No Healthy Volunteers

Inclusion criteria

  • Patients ≥ 18 years of age diagnosed with suspected or confirmed NSCLC based on CT and PET scans that are referred for chest staging by EBUS-TBNA
  • CT and PET scans completed

Exclusion criteria

  • Patients with cN0 disease AND peripheral tumors AND tumors < 2 cm in diameter (those do not require chest staging)

Trial design

Primary purpose

Diagnostic

Allocation

Non-Randomized

Interventional model

Crossover Assignment

Masking

None (Open label)

600 participants in 2 patient groups

NodeAI
Experimental group
Description:
The ultrasound video and images of each LN will be analyzed by NodeAI, which will assign a CLNS for each LN based on the four ultrasonographic features of the CLNS, predict LN malignancy, and determine whether to biopsy it or not.
Treatment:
Diagnostic Test: NodeAI
Surgeon
Active Comparator group
Description:
The ultrasound video and images of each LN will first be analyzed by the surgeon, who will assign a CLNS for each LN based on the four ultrasonographic features of the CLNS, predict LN malignancy, and determine whether to biopsy it or not.
Treatment:
Diagnostic Test: Surgeon

Trial contacts and locations

1

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Central trial contact

Waël C. Hanna, MDCM, MBA, FRCSC; Yogita S. Patel, BSc

Data sourced from clinicaltrials.gov

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