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510(k) Data Aggregation

    K Number
    K251406
    Device Name
    BriefCase-Triage
    Date Cleared
    2025-05-30

    (24 days)

    Product Code
    Regulation Number
    892.2080
    Reference & Predicate Devices
    Predicate For
    N/A
    AI/MLSaMDIVD (In Vitro Diagnostic)TherapeuticDiagnosticis PCCP AuthorizedThirdpartyExpeditedreview
    Intended Use

    BriefCase-Triage is a radiological computer aided triage and notification software indicated for use in the analysis of CT chest, abdomen, or chest/abdomen exams with contrast (CTA and CT with contrast) in adults or transitional adolescents aged 18 and older. The device is intended to assist hospital networks and appropriately trained medical specialists in workflow triage by flagging and communication of suspected positive findings of Aortic Dissection (AD) pathology.

    BriefCase-Triage uses an artificial intelligence algorithm to analyze images and highlight cases with detected findings on a standalone desktop application in parallel to the ongoing standard of care image interpretation. The user is presented with notifications for cases with suspected findings. Notifications include compressed preview images that are meant for informational purposes only and not intended for diagnostic use beyond notification. The device does not alter the original medical image and is not intended to be used as a diagnostic device.

    The results of BriefCase-Triage are intended to be used in conjunction with other patient information and based on their professional judgment, to assist with triage/ prioritization.

    Device Description

    Briefcase-Triage is a radiological computer-assisted triage and notification software device. The software is based on an algorithm programmed component and is intended to run on a linux-based server in a cloud environment.

    The Briefcase-Triage receives filtered DICOM Images, and processes them chronologically by running the algorithms on each series to detect suspected cases. Following the AI processing, the output of the algorithm analysis is transferred to an image review software (desktop application). When a suspected case is detected, the user receives a pop-up notification and is presented with a compressed, low-quality, grayscale image that is captioned "not for diagnostic use, for prioritization only" which is displayed as a preview function. This preview is meant for informational purposes only, does not contain any marking of the findings, and is not intended for primary diagnosis beyond notification.

    Presenting the users with worklist prioritization facilitates efficient triage by prompting the user to assess the relevant original images in the PACS. Thus, the suspect case receives attention earlier than would have been the case in the standard of care practice alone.

    AI/ML Overview

    Here's a detailed breakdown of the acceptance criteria and study findings for BriefCase-Triage, based on the provided FDA 510(k) clearance letter:


    1. Table of Acceptance Criteria and Reported Device Performance

    ParameterAcceptance CriteriaReported Device Performance
    Primary EndpointsA lower bound 95% Confidence Interval (CI) of 80% for Sensitivity and Specificity at the default operating point.Default Operating Point: - Sensitivity: 92.7% (95% CI: 88.2%, 95.8%). The lower bound (88.2%) is > 80%. - Specificity: 92.8% (95% CI: 89.2%, 95.4%). The lower bound (89.2%) is > 80%. Additional Operating Points (AOPs) meeting criteria: - AOP1: Sensitivity 95.6% (95% CI: 91.8%-98.0%), Specificity 88.2% (95% CI: 84.0%-91.6%) - AOP2: Sensitivity 94.1% (95% CI: 90.0%-96.9%), Specificity 89.8% (95% CI: 85.8%-93.0%) - AOP3: Sensitivity 89.3% (95% CI: 84.2%-93.2%), Specificity 94.7% (95% CI: 91.6%-97.0%) - AOP4: Sensitivity 86.3% (95% CI: 80.9%-90.7%), Specificity 97.7% (95% CI: 95.3%-99.1%)
    Secondary Endpoints (Comparability with Predicate)Time-to-notification metric for the Briefcase-Triage software should demonstrate comparability with the predicate device.Briefcase-Triage (Subject Device): Mean time-to-notification = 10.7 seconds (95% CI: 10.5-10.9) Predicate AD: Mean time-to-notification = 38.0 seconds (95% CI: 35.5-40.4) The subject device's time-to-notification is faster than the predicate, demonstrating comparability and improvement in time savings.

    2. Sample Size Used for the Test Set and Data Provenance

    • Sample Size: 509 cases.
    • Data Provenance:
      • Country of origin: 5 US-based clinical sites.
      • Retrospective or Prospective: Retrospective.
      • Data Sequestration: Cases collected for the pivotal dataset were "all distinct in time or center from the cases used to train the algorithm," and "Test pivotal study data was sequestered from algorithm development activities."

    3. Number of Experts Used to Establish the Ground Truth for the Test Set and Their Qualifications

    • Number of Experts: Three (3) senior board-certified radiologists.
    • Qualifications: "Senior board-certified radiologists." (Specific years of experience are not provided.)

    4. Adjudication Method for the Test Set

    • The text states "the ground truth, as determined by three senior board-certified radiologists." This implies a consensus-based adjudication, likely 3-0 or 2-1 (majority vote), but the exact method (e.g., 2+1, 3+1) is not explicitly detailed.

    5. Multi-Reader Multi-Case (MRMC) Comparative Effectiveness Study

    • Was it done? No.
    • The study primarily focused on the standalone performance of the AI algorithm compared to ground truth and a secondary comparison of time-to-notification with a predicate device. It did not evaluate human reader performance with and without AI assistance.

    6. Standalone Performance Study

    • Was it done? Yes.
    • The study evaluated the algorithm's performance (sensitivity, specificity, PPV, NPV, PLR, NLR) in identifying AD pathology without human intervention as a primary and secondary endpoint. The device's output is "flagging and communication of suspected positive findings" and "notifications include compressed preview images that are meant for informational purposes only and not intended for diagnostic use beyond notification," confirming a standalone function.

    7. Type of Ground Truth Used

    • Ground Truth: Expert Consensus, specifically "as determined by three senior board-certified radiologists."

    8. Sample Size for the Training Set

    • The document states, "The algorithm was trained during software development on images of the pathology." However, it does not specify the sample size for the training set. It only mentions that the pivotal test data was "distinct in time or center" from the training data.

    9. How the Ground Truth for the Training Set Was Established

    • "As is customary in the field of machine learning, deep learning algorithm development consisted of training on labeled ("tagged") images. In that process, each image in the training dataset was tagged based on the presence of the critical finding."
    • While it indicates images were "labeled ("tagged")" based on the "presence of the critical finding," it does not explicitly state who established this ground truth for the training set (e.g., experts, pathology, etc.). It's implied that medical professionals were involved in the labeling process, but no specific number or qualification is provided for the training set.
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