Comparative Study on Medical Artificial Intelligence Algorithm Assisted and Conventional Imaging Examination Methods
NCT ID: NCT07040527
Last Updated: 2025-06-27
Study Results
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Basic Information
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NOT_YET_RECRUITING
100 participants
OBSERVATIONAL
2025-07-01
2028-12-31
Brief Summary
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Detailed Description
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Malignant chest wall tumors require extensive resection to ensure the thoroughness of the surgery. However, the extensive chest wall defect formed after extensive resection can lead to the destruction of the integrity and stability of the chest wall. If not handled properly, it can cause chest wall softening, abnormal breathing, and acute respiratory failure in the early postoperative period, affecting the therapeutic effect of the surgery; However, in the late stage after surgery, chest wall deformities, pulmonary hernias, chronic respiratory dysfunction, and even scoliosis may occur, which can affect the quality of life.
Therefore, for chest wall tumor surgery, it is not only required to achieve thorough enlargement and resection, but also to consider precise resection to preserve the normal structure of the chest wall as much as possible to avoid adverse consequences. For some well-defined malignant tumors of the chest wall, determining the surgical resection margin is relatively simple. However, for other malignant tumors of the chest wall, such as those with invasive growth, those that recur after the first surgery, or those that recur locally after radiotherapy and chemotherapy, it is often difficult to determine the appropriate surgical resection range and resection margin in clinical practice. At this point, the surgical plan can only be determined and formulated based on the clinical experience of the surgeon and traditional imaging examination results before surgery, which has great uncertainty and increases the complexity and difficulty of the surgery.
Medical artificial intelligence is the in-depth application of artificial intelligence technology in the field of medicine. It integrates knowledge from multiple disciplines such as computer science, data science, and biomedical engineering, aiming to improve the efficiency, accuracy, and personalization of medical services by simulating human intelligent behavior. MedAI provides intelligent services for physicians to assist in diagnosis \[5-7\], recommend treatment methods, and monitor patients by processing and analyzing massive amounts of medical data, thereby optimizing the allocation of medical resources and improving the patient's medical experience.
At present, MedAI is mainly focused on screening lung nodules, determining the nature of lung nodules, and providing three-dimensional simulation imaging of lung nodules as a reference for surgical methods in the field of thoracic surgery. However, there have been no reports on its application in the clinical treatment of chest wall tumors. Therefore, we plan to conduct research in this area to broaden the application of MedAI in general thoracic surgery and provide better medical quality services for chest wall tumor patients, especially those with malignant chest wall tumors.
In the field of surgical planning for chest wall tumors, conventional imaging methods such as CT and MRI can provide basic anatomical information, but they have limitations. Doctors need to manually analyze two-dimensional images, which makes it difficult to accurately construct the three-dimensional spatial relationship between tumors and complex chest wall structures (such as ribs, blood vessels, and nerves), especially when the tumor boundaries are blurred and adhered to surrounding tissues, which can easily lead to surgical planning deviations and affect the integrity and safety of tumor resection The significant advantages of medical artificial intelligence algorithms in this regard lie in precise tumor localization, multidimensional data analysis, and surgical plan optimization.
Conditions
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Study Design
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OTHER
PROSPECTIVE
Study Groups
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Medical Artificial Intelligence Algorithm Assistance Group
Before surgery, medical artificial intelligence algorithms are used to outline the resection range of chest wall tumors, while during the actual surgical process, the resection range is determined by intraoperative frozen pathology. Ultimately, the value of medical artificial intelligence algorithm assistance will be evaluated based on paraffin pathology of surgical margins.
No interventions assigned to this group
Routine imaging examination group
Before surgery, conventional imaging methods are used to outline the resection range of chest wall tumors, while during the actual surgical process, the resection range is determined by intraoperative frozen pathology. The value of routine imaging examination was ultimately evaluated by paraffin pathology of the surgical margin.
No interventions assigned to this group
Eligibility Criteria
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Inclusion Criteria
Exclusion Criteria
18 Years
70 Years
ALL
No
Sponsors
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Shanghai Jiao Tong University Affiliated Sixth People's Hospital
OTHER
Responsible Party
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Wu Weiming
Thoracic Surgery
Other Identifiers
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20250521
Identifier Type: -
Identifier Source: org_study_id
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