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Prediction Model of Peripheral Pulmonary Lesions Based on R-EBUS Image

Shanghai Jiao Tong University logo

Shanghai Jiao Tong University

Status

Unknown

Conditions

Diagnoses Disease

Study type

Observational

Funder types

Other

Identifiers

NCT04497233
SHCHE202001

Details and patient eligibility

About

Peripheral pulmonary lesions(PPLs) have a wide spectrum of diseases, and the diagnosis will affect the treatment strategy and prognosis. Radial endobronchial ultrasound (R-EBUS) can be used for non-invasive diagnosis of PPLs, and the supplement pathological diagnosis results of EBUS-TBLB, which has important clinical application value. This project intends to select representative images from R-EBUS dynamic videos for qualitative and quantitative analysis, to establish and verify the diagnostic evaluation system of R-EBUS forPPLs. Then build 1,000 R-EBUS image databases of PPLs, train deep learning networks for automatic extraction and diagnosis of target areas, and automatically extract representative images from videos to establish a benign and malignant prediction model of PPLs. We will provide reliable theoretical basis for the diagnosis of PPLs, and optimize the diagnosis and treatment method.The network would be prospectively verified through 300 R-EBUS images from multi centers.

Full description

PPLs are lesions at tertiary bronchus and above. The lesion cannot be seen by conventional bronchoscopy and the diagnosis will affect the treatment strategy and prognosis. R-EBUS can be used for non-invasive diagnosis of PPLs, and the supplement pathological diagnosis results of EBUS-TBLB. During the procedure, target PPLs are examined by ultrasound host (EU-ME2, Olympus, Tokyo, Japan) equipped with Doppler function and ultrasound probe . The bronchoscope reaches the distal as far as possible according to the predetermined position on chest CT or positron emission tomography-computed tomography (PET-CT) . The R-EBUS probe is inserted into the working channel of the bronchoscope, and gradually approaches the target PPL to obtain R-EBUS image. According to the characteristics such as within or adjacent to image, the probe scan the lesion from the near end to the far end and record the video. The recording time is required longer than 10 seconds. After selecting a typical R-EBUS image, freeze the image and take a screenshot. The long and short diameter of the lesion will be measured. This project includes three parts: preliminary construction and evaluation of R-EBUS image system for benign and malignant PPLs, construction of R-EBUS artificial intelligence prediction model and multi-center prospective validation of the prediction model. A total of 1000 patients will be enrolled to construct diagnostic model and 300 are enrolled to verify the diagnostic effiency.

Enrollment

1,300 estimated patients

Sex

All

Ages

18+ years old

Volunteers

No Healthy Volunteers

Inclusion criteria

  1. Patients with PPLs in Chest CT or PET / CT;
  2. Chest CT or PET / CT shows PPLs with diameter greater than 8 mm;
  3. Patients agree to perform EBUS-TBLB and sign the informed consent.

Exclusion criteria

  1. Thin-layer Chest CT or PET / CT indicates lack of bronchial access to PPLs;
  2. Patients refuse to participate in this clinical trial;
  3. Patients with severe cardiopulmonary dysfunction or other indications that not allowed for bronchoscopy;
  4. Visible lesions in the lumen during conventional bronchoscopy;
  5. Patients have other related contraindications of bronchoscopy;
  6. Patients have other reasons unfit for this study.

Trial design

1,300 participants in 1 patient group

Prospectively validation group
Description:
Two diagnosis methods will be used in the prospective validation section, one is traditional qualitative and quantitative method, the other is artificial intelligence prediction model based on videos to compare the diagnostic efficacy.

Trial contacts and locations

1

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Central trial contact

Jiayuan Sun, PhD

Data sourced from clinicaltrials.gov

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