Lung Cancer Clinical Trial
— MIRACLEOfficial title:
MIRA Clinical Learning Environment (MIRACLE): Lung
The goal of this quality improvement (QI) study is to develop automated clinical pipelines to implement machine learning models in the care pathway of lung cancer patients. The main questions it aims to answer are: - Can model-prompted risk classifications be incorporated into clinician workflows to enable informed clinical decision-making? - What are clinicians' perceptions of the information from model outputs, and do they change their decision about data already available to them as a result of the model-prompted risk classification (i.e., to re-review or further assess patients identified by the models as being higher risk)? Participating radiation oncologists will receive the risk prediction from the model and be asked to complete a survey to give feedback on how they used the prediction in their decision-making.
Status | Recruiting |
Enrollment | 1000 |
Est. completion date | December 31, 2023 |
Est. primary completion date | December 31, 2023 |
Accepts healthy volunteers | No |
Gender | All |
Age group | 18 Years and older |
Eligibility | Inclusion Criteria: - Diagnosed with lung cancer stage I-IV and planned for treatment with radiotherapy at Princess Margaret hospital. The three aims of this project have specific inclusion criteria as follows. - Aim 1 ILD: All lung cancer patients receiving RT. - Aim 2 SGR: Node negative lung cancer patients receiving stereotactic body RT. - Aim 3 CBCT: Node positive lung cancer patients receiving standard RT. Exclusion Criteria: - No exclusion criteria |
Country | Name | City | State |
---|---|---|---|
Canada | Princess Margaret Hospital | Toronto | Ontario |
Lead Sponsor | Collaborator |
---|---|
University Health Network, Toronto | University of Toronto |
Canada,
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* Note: There are 12 references in all — Click here to view all references
Type | Measure | Description | Time frame | Safety issue |
---|---|---|---|---|
Primary | Rates of true positive diagnosis of ILD increase with high/low patient risk predictions being made available to clinicians. | An expert review of the cases and chart review will be correlated with survey responses to determine whether the rate of true positive cases were impacted by the implementation of the MIRACLE pathways. | January 2022 - December 2023 | |
Primary | Previously difficult-to-assess information are made available during the clinical workflow as an easily accessible information source available to clinicians | Clinicians will provide feedback on the communication of the predictions, the integration into their clinical workflow and timeliness of receiving the predictions in order to incorporate into their decision-making. | January 2022 - December 2023 | |
Primary | Radiation oncologists use predictions provided from the model to support their clinical decision-making. | Clinicians will indicate in the survey their perceptions of accuracy and usefulness of the predictions and whether they have incorporated the predictions into their decision-making. | January 2022 - December 2023 | |
Secondary | Additional expertise is focused on patients identified as being higher risk for ILD, SGR > 0.04, or possible pneumonitis. | Clinicians will indicate in the survey whether they have gone back and reassessed or flagged patients in cases where the model identifies a possible high-risk for ILD, SGR > 0.04, or pneumonitis. | January 2022 - December 2023 |
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