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Trial Title:
AI Determine Malignancy of GGO on Chest CT
NCT ID:
NCT06282068
Condition:
Lung Nodules, Early Lung Cancer, Artificial Intelligence, Chest CT, Minimally Invasive Surgery, Lung Image Analysis Software
Conditions: Official terms:
Neoplasms
Study type:
Observational
Overall status:
Enrolling by invitation
Study design:
Time perspective:
Prospective
Intervention:
Intervention type:
Diagnostic Test
Intervention name:
AI computer-aided detection software
Description:
non-invasive
Summary:
Research Objectives To use AI computer-aided detection software to assist physicians in
reading CT scans of lung nodules, providing auxiliary diagnostic tools for medical
decision-making. The software can mark nodule locations and related information during
routine physician reading. This study will obtain prospective consent to use patient CT
images for software reading and compare with clinical physician diagnosis, in order to
enhance software training and improve recognition of lung lesions for early diagnosis and
treatment.
Study Design Collect CT images of untreated lung nodules 4-30mm in size that are
scheduled for surgery. No limits on age, gender, disease type, with image resolution
<2.5mm. AI and clinicians will judge nodule characteristics separately. Surgical
resection followed by comparison with pathology reports will evaluate diagnostic
accuracy.
Study Procedures A double-blinded method will be used. AI and physicians will record
nodules as likely benign or malignant separately. After surgical resection, the lesions
will undergo pathological staging and the diagnostic accuracy of both groups will be
compared.
Expected Results Compare the diagnostic accuracy of AI and clinicians to improve AI
training quality, achieve early diagnosis and treatment goals, and provide patients with
better medical care quality.
Monitoring Method AI and clinicians will read separately, adhering to shared decision
making without affecting patient access to diagnosis and treatment.
Keywords: lung nodules, early lung cancer, artificial intelligence, chest CT, minimally
invasive surgery, lung image analysis software
Detailed description:
1. Research Objectives
This study will install artificial intelligence (AI) computer-aided detection software
(CADe) on the original user interface to provide auxiliary diagnostic tools for clinical
medical decision-making.
During routine CT examinations, this reading software can assist in identifying nodules
in chest CT scan images. When physicians routinely read lung CT scan images, the marking
results will be displayed. Applicable nodule sizes are 4mm to 30mm. When suspicious
nodules are detected, the physician will mark the ROI (Region of Interest) location and
present nodule-related information for physician reference during diagnosis.
This study will also obtain informed consent forms from subjects on a prospective basis
to acquire patients' serial chest CT images. The AI intelligent lung image reading
software and clinically caring physicians will provide benign and malignant after
judgment. This is to enhance the practical training of intelligent software. It is also
expected to improve the recognition of benign and malignant lung lesions in future
images, not just lung nodules. This can reduce overdiagnosis and treatment rates, or it
is expected to improve the accuracy of early diagnosis and treatment. "AI cannot be used
as the sole basis for diagnosis. It only provides auxiliary diagnostic tools for clinical
medical decision-making and must not simplify or replace diagnosis/treatment procedures."
2. Study Design (Summary)
The enrollment period is limited to 2 years. There are no gender restrictions. Age >20Y/O
. Patients with Low-dose chest CT scans (<2.5mm slice thickness, imaging from any
hospital) detecting lung nodules (no limit on nodule type/region or nature of nodules
4-30mm) that have not yet undergone surgery, and are scheduled to undergo surgical
resection at the Department of Thoracic Surgery, Chung Shan Medical University Hospital
will be included.
Exclusion criteria are low-dose chest CT scans (only >2.5-5mm slice thickness, imaging
from any hospital), lung tumors (>30mm, no limit on nature), lung nodules that have
already undergone surgical resection (no limit on known or unknown pathology reports),
and patients with known other cancers (other known cancers besides lung cancer that meets
inclusion criteria must be excluded) will not be included.
Trial group: AI Control group: Attending physician from the Department of Thoracic
Surgery, Chung Shan Medical University Hospital
● Study Procedures
Under the above conditions of low-dose chest CT imaging and inclusion criteria, the two
groups will identify and record lung nodules and mark them as either likely benign or
likely malignant prior to impending surgery (before pathology reports are known). All of
these lung lesions will eventually undergo surgical resection (no limit on surgical
methods) and complete pathological results. Analysis will then be performed to evaluate
the accuracy of predicting benignancy or malignancy in the trial and control groups.
Notes:
1. Identification records will be collected by co-PI (Tsai) in a double-blinded manner.
2. Trial group - AI by V5 lung image reading software
3. Control group - Attending physician from Dept of Thoracic Surgery, Chung Shan
Medical University Hospital. Cannot rely solely on V5 lung image reading software
for diagnosis. Cannot simplify or replace diagnosis/treatment procedures. Cannot
affect patient's rights to diagnosis and treatment.
4. This study cannot affect or intervene with patients receiving diagnosis and
treatment. Must respect shared decision making between doctors and patients, and
respect patient autonomy.
- Inclusion Criteria
1. Age>20 y/o
2. Gender (no limit)
3. Disease type (no limit on known lung cancer history, acute or chronic non-cancerous
conditions)
4. Low-dose chest CT (<2.5mm slice thickness, imaging from any hospital)
5. Lung nodules (no limit on nodule type/region, or nature of nodules <4-30mm)
6. Lesions not yet operated on, expected to undergo surgical resection at Dept of
Thoracic Surgery, Chung Shan Medical University Hospital
- Exclusion Criteria
1. Low-dose chest CT (only >2.5-5mm slice thickness, imaging from any hospital)
2. Lung tumors (>30mm, no limit on nature)
3. Lung nodules that have undergone surgical resection (no limit on known or unknown
pathology)
4. Patients with known other cancers (other known cancers besides lung cancer meeting
inclusion criteria must be excluded)
● Statistical Analysis Method
Clinical trials will be conducted in a double-blinded manner, under the premise of
not affecting disease diagnosis and treatment procedures.
ROC curves
- Evaluation Indices
Comparison with post-operative pathology reports will serve as imaging evaluation
indices for accuracy and ratios of benignancy vs. malignancy.
- Withdrawal Criteria
This study does not conflict with clinical medical shared decision-making nor affect
any original established treatments. Results will only serve as future auxiliary
clinical tools to assist in identification and utilization, with the goal of
providing advantages in clinical decision-making for lung cancer diagnosis and
treatment.
- Rescue Treatments
None, does not affect any impending medical shared decision-making and treatments.
No risk impacts.
- Target enrollment number
100 patients over 2 years study period.
- Expected Study Duration
3/1/2024 - 2/28/2026
Criteria for eligibility:
Study pop:
Low-dose chest CT (only >2.5-5mm slice thickness, imaging from any hospital) Lung tumors
(>30mm, no limit on nature) Lung nodules that have undergone surgical resection (no limit
on known or unknown pathology) Patients with known other cancers (other known cancers
besides lung cancer meeting inclusion criteria must be excluded)
Sampling method:
Non-Probability Sample
Criteria:
Inclusion Criteria:
- Age >20 Gender (no limit) Disease type (no limit on known lung cancer history, acute
or chronic non-cancerous conditions) Low-dose chest CT (<2.5mm slice thickness,
imaging from any hospital) Lung nodules (no limit on nodule type/region, or nature
of nodules <4-30mm) Lesions not yet operated on, expected to undergo surgical
resection at Dept of Thoracic Surgery, Chung Shan Medical University Hospital
Exclusion Criteria:
-
Gender:
All
Minimum age:
20 Years
Maximum age:
N/A
Locations:
Facility:
Name:
Chung Shan Medical University Hospital
Address:
City:
Taichung
Zip:
402
Country:
Taiwan
Start date:
March 1, 2024
Completion date:
February 28, 2026
Lead sponsor:
Agency:
Chung Shan Medical University
Agency class:
Other
Source:
Chung Shan Medical University
Record processing date:
ClinicalTrials.gov processed this data on November 12, 2024
Source: ClinicalTrials.gov page:
https://clinicaltrials.gov/ct2/show/NCT06282068