Using Deep Learning Methods to Analyze Automated Breast Ultrasound Images to Establish a Diagnosis Therapy Assessment and Prognosis Prediction Model of Breast Cancer.

  • STATUS
    Recruiting
  • participants needed
    10000
  • sponsor
    The First Affiliated Hospital of the Fourth Military Medical University
Updated on 19 February 2024
early detection
ultrasound breast

Summary

The purpose of this study is using a deep learning method to analyze the automated breast ultrasound (ABUS) imagings, establish and evaluate a diagnosis, therapy assessment and prognosis prediction model of breast cancer. The model would provide important references for further early prevention, early diagnosis and personalized treatment.

Description

  1. Establishing a database By collecting ABUS and comprehensive breast image data, essential information, clinical treatment information, prognosis, and curative effect information, a complete breast image database is constructed.
  2. Marking ABUS image Three doctors use a semi-automatic method to frame the lesions on the image.
  3. Building the model Using the deep learning method to preprocess, analyze and train the marked image, and finally get a model diagnosis, efficacy evaluation and prognosis prediction model of breast cancer.
  4. Evaluating the model 1Self-validation Analyze the sensitivity, AUC of the breast cancer diagnosis model and the false-positive number on each ABUS volume.
  5. Compared the sensitivity, AUC and the false-positive number with a commercial diagnosis model.

3)By analyzing the size and characteristics of the lesions after neoadjuvant chemotherapy, and predicting the OS and DFS time, the therapy assessment and prognosis prediction model were evaluated.

Details
Condition Breast Cancer, Breast Cancer
Age 18-100 years
Treatment ABUS
Clinical Study IdentifierNCT04270032
SponsorThe First Affiliated Hospital of the Fourth Military Medical University
Last Modified on19 February 2024

Eligibility

Yes No Not Sure

Inclusion Criteria

Female patients over 18 years old who come to the two centers for physical examination or treatment
Complete basic information and image data

Exclusion Criteria

There is no complete ABUS image data
The image quality of ABUS image is poor
In multifocal breast cancer, the correlation between the tumor in the image and the postoperative pathological examination is uncertain
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