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AI-Assisted Chest-CT Reporting for Enhanced Speed and Quality (The DOUBLE-ACE Study) (DOUBLE-ACE)

2026年6月5日 更新者:Shanghai Zhongshan Hospital

A Multicenter Comparative Study Evaluating the Impact of an AI-Assisted Chest CT Reporting System on Real-world Radiologist Performance: The DOUBLE-ACE Study

The goal of this observational study is to learn if an AI assistant tool can help doctors who read chest CT scans (called radiologists) write their reports faster and just as well or better. Chest CT scans are common pictures taken of the inside of the chest to help with diagnosis. The main questions the study aims to answer are: (1) Does using the AI tool save radiologists time when writing their reports? (2) Are the final reports written with the AI tool's help as good as or better than reports written without it? To answer these questions, researchers will compare two time periods at several hospitals. They will look at how long it took to write reports and how good the reports were, both from a time before the AI tool was available and from a time after it was in regular use. In this study, radiologists will use the AI tool as part of their normal daily work. The tool is built into the computer system they already use to look at scans. Researchers will then measure the time and quality of the reports produced during their regular shifts.

調査の概要

詳細な説明

Here we provide a summary of the study's methodological framework, including a description of the AI system under evaluation, key quality control measures, and the data analysis plan. Comprehensive details regarding the full protocol, including eligibility criteria and outcome measures, can be found in the other modules of the study protocol.

  1. Background on the AI System: The study evaluates a clinically deployed AI-assisted reporting system, built upon an advanced multimodal foundation model trained on a large-scale chest CT dataset. Its performance, reliability, and generalizability have been established through rigorous validation on extensive internal and external datasets. Prior reader studies have demonstrated its clinical utility by significantly reducing reporting time through automated draft generation while maintaining or improving report quality, supporting its integration into real-world workflow for this evaluation.
  2. Quality Control: To ensure objective assessment, report quality will be scored by a panel of at least two independent, blinded thoracic radiologists using a standardized rubric, with inter-rater reliability calculated. A study-specific data dictionary and Standard Operating Procedures (SOPs) for data handling and analysis will be implemented to ensure reproducibility and auditability.
  3. Data Analysis Plan: A comparative statistical analysis between pre- and post-implementation groups is planned. Appropriate statistical tests (e.g., Mann-Whitney U test, mixed-effects models) will be applied based on data distribution and variable type. A sample size calculation will be conducted to ensure the study is adequately powered to detect a clinically meaningful difference in the primary efficiency endpoint. The primary analysis will be a paired comparison of outcomes (e.g., report time, quality) between the two phases for the participants who complete both. To address potential attrition (e.g., radiologist turnover during the study year) and the influence of radiologist experience, the analysis plan includes: (1) Accounting for and reporting any participant dropout between phases. (2) Conducting pre-specified subgroup or stratified analyses based on radiologist seniority (e.g., junior vs. senior) to examine its effect on the outcomes.
  4. Confounding Factor Control: To minimize potential bias, the study may identify collective variables (radiologists' sex, years of relevant professional experience, etc.) that may be considered potential confounding factors according to external experts' judgements. Certain patient-related information, such as diagnosis (infection, malignancy, cardiovascular disease, etc.) and clinical scenario (e.g., inpatient, outpatient, emergency), may also be collected retrospectively, where necessary, to evaluate model performance within specific diagnostic subgroups. The study will adopt multiple possible approaches for confounding factor adjustment or analysis, which may include stratified analyses and other related statistical methods.
  5. Potential Adjustments in Study Protocol or Analysis Methods: As the study may involve multiple centers, in case of ethical or administrative restrictions at certain time at specific sites, AI assistance may be temporarily suspended to approximate the scenario without AI assistance at those sites. In such cases, the corresponding results may be reported as the with-AI and without-AI phases, rather than labeling them as baseline and AI-available phases. Furthermore, radiologists who decline to provide demographic or occupational information (e.g., years of professional experience or sex)-variables that may serve as potential confounders-will be excluded from adjusted and stratified analyses that require such covariates. These approaches may need to be incorporated into confounding factor or stratified analyses, and we may update related conditions accordingly when necessary.

研究の種類

観察的

入学 (推定)

75

連絡先と場所

このセクションには、調査を実施する担当者の連絡先の詳細と、この調査が実施されている場所に関する情報が記載されています。

研究連絡先

  • 名前:Xiaodan Ye, MD, PhD
  • 電話番号:+86-13761459998
  • メールyuanyxd@163.com

研究連絡先のバックアップ

研究場所

      • Shanghai、中国
        • Department of Radiology, Zhongshan Hospital, Fudan University, Shanghai
        • 主任研究者:
          • Mengsu Zeng, MD, PhD
        • コンタクト:
          • Xiaodan Ye, MD, PhD
          • 電話番号:+86-13761459998
          • メールyuanyxd@163.com
        • コンタクト:
      • Shanghai、中国
        • United Imaging Intelligence, Shanghai, Shanghai
        • コンタクト:
        • コンタクト:
        • 主任研究者:
          • Dinggang Shen, PhD

参加基準

研究者は、適格基準と呼ばれる特定の説明に適合する人を探します。これらの基準のいくつかの例は、人の一般的な健康状態または以前の治療です。

適格基準

就学可能な年齢

  • 大人
  • 高齢者

健康ボランティアの受け入れ

なし

サンプリング方法

非確率サンプル

調査対象母集団

The study population is defined as follows:

  1. Radiologists: Attending radiologists who routinely interpret chest CT scans as part of their clinical duties at the participating medical centers.
  2. Chest CT Scans: Clinically indicated, non-contrast chest CT examinations acquired from the patient populations served by the participating centers. The scans are stratified into two groups based on the date of acquisition: before and after the implementation of the AI reporting system.

説明

The study participants include both the radiologists whose performance is evaluated and the chest CT scans they interpret. Eligibility criteria are defined for both.

1. Inclusion Criteria

1.1 For Radiologists

  1. Board-certified radiologists specializing in or routinely performing thoracic imaging.
  2. Employed at one of the participating study centers for the entire duration of both the without-AI and with-AI study periods.
  3. Interpreted a minimum of eligible chest CT scans (e.g., > 50 scans) during both the without-AI and with-AI data collection periods.

1.2 For Chest CT Scans

  1. Non-contrast chest CT examinations performed for any clinical indication.
  2. Scans completed and finalized during the defined with-AI or without-AI study periods.
  3. Patient age 18 years or older at the time of the scan.

2. Exclusion Criteria

2.1 For Radiologists:

  1. Radiologists who joined, left, or were on extended leave (e.g., >4 weeks) from the participating center between the with-AI and without-AI study periods.
  2. Radiologists who interpreted fewer than the minimum required number of eligible scans in either study period.
  3. Radiologists who voluntarily decline to have their de-identified performance data included in the study analysis.
  4. Radiologists who decline to provide demographic or occupational information (e.g., years of professional experience or sex)-variables that may serve as potential confounders-will be excluded from adjusted and stratified analyses that require such covariates.

2.2 For Chest CT Scans

  1. CT scans of pediatric patients (age < 18 years).
  2. Contrast-enhanced chest CT studies.
  3. Studies performed for specific procedural guidance (e.g., biopsy, ablation).
  4. Studies deemed technically inadequate for primary interpretation by radiologist (e.g., severe motion artifact, incomplete study).
  5. Studies for which the AI system fails to generate a valid preliminary report draft. This includes possible system failures, algorithm errors, or cases where the generated draft is deemed technically unusable (e.g., empty, garbled, or based on critically flawed image analysis).
  6. The lack of relevant information (diagnosis, clinical scenario, etc.). Chest CT data will be excluded from corresponding analyses if the required information, which is necessary for confounding control, subgroup analyses, or other pre-specified analyses, is unavailable. Such scenarios include data that cannot be retrospectively retrieved, incompletely recorded, or restricted due to ethical or institutional requirements.

研究計画

このセクションでは、研究がどのように設計され、研究が何を測定しているかなど、研究計画の詳細を提供します。

研究はどのように設計されていますか?

デザインの詳細

コホートと介入

グループ/コホート
介入・治療
Radiologists with/without chest CT interpretation AI assistant
This study employs a single-arm, within-subjects design. A cohort of radiologists will be followed through two sequential practice phases: (1) Baseline (Control) Phase: Participants interpret and report on chest CT scans using their standard clinical workflow without AI assistance. (2) AI-available phase: The same participants interpret and report on a different set of chest CT scans with the integrated AI-assisted reporting system activated in their workflow.
The intervention under evaluation is an AI-assisted diagnostic reporting system, integrated directly into the radiologists' workflow. The system analyzes the CT images in real time using an AI model and automatically generates a structured, preliminary radiology report draft. The interpreting radiologist reviews this AI-generated draft, which is presented within their familiar reporting interface. The radiologist then actively edits, confirms, supplements, or overrides the draft content as necessary before finalizing and signing the report. This intervention is distinguished from other AI tools by its focus on end-to-end reporting efficiency via integrated draft generation within the radiologist's classic workflow. It moves beyond simple abnormality detection or highlighting by generating a complete, structured narrative report draft, aiming to reduce dictation/typing time and minimize oversight of findings.

この研究は何を測定していますか?

主要な結果の測定

結果測定
メジャーの説明
時間枠
Change in Average Image Interpretation Time
時間枠:Time of interpretation will be collected once the data become fully available (generally within 2 weeks after the planned primary completion date). Final aggregated analysis will be completed within 3 months after the collection of potential confounders.
Comparison of the average time taken by participating radiologists to complete standard chest CT interpretation tasks, measured both with and without use of the automated interpretation tool. The time will be recorded from the start to the completion of each individual reading case.
Time of interpretation will be collected once the data become fully available (generally within 2 weeks after the planned primary completion date). Final aggregated analysis will be completed within 3 months after the collection of potential confounders.
Change in Chest CT Report Quality Score
時間枠:Reports will be distributed to external experts for scoring once the data become available, with scoring results returned within 7 days. Final aggregated analysis will be completed within 3 months after the collection of potential confounders.
Comparison of the subjective quality of chest CT reports written with and without automated tool support. Blinded external experts will evaluate the subjective quality of all sampled reports using a 10-point rating scale, with scores ranging from 1 (poorest quality) to 10 (highest quality).
Reports will be distributed to external experts for scoring once the data become available, with scoring results returned within 7 days. Final aggregated analysis will be completed within 3 months after the collection of potential confounders.

その他の成果指標

結果測定
メジャーの説明
時間枠
Radiologist Editing Intensity on AI-Generated Report Drafts
時間枠:Report texts will be collected once the data become fully available (generally within 2 weeks after the planned primary completion date). Final aggregated analysis will be completed within 3 months after the collection of potential confounders.
This measure quantifies the extent of modification a radiologist makes to the initial draft report generated by the AI system. Editing intensity will be algorithmically calculated for each report in the with-AI period. A common method is the normalized edit distance (e.g., Levenshtein distance) or the percentage of text modified between the AI-generated draft and the radiologist's final signed report.
Report texts will be collected once the data become fully available (generally within 2 weeks after the planned primary completion date). Final aggregated analysis will be completed within 3 months after the collection of potential confounders.

協力者と研究者

ここでは、この調査に関係する人々や組織を見つけることができます。

スポンサー

捜査官

  • スタディチェア:Mengsu Zeng, MD, PhD、Department of Radiology, Zhongshan Hospital, Fudan University
  • スタディディレクター:Dinggang Shen, PhD、United Imaging Intelligence, Shanghai
  • スタディディレクター:Jianying Gu, MD, PhD、Department of Radiology, Zhongshan Hospital, Fudan University
  • スタディディレクター:Dijia Wu, PhD、United Imaging Intelligence, Shanghai

出版物と役立つリンク

研究に関する情報を入力する責任者は、自発的にこれらの出版物を提供します。これらは、研究に関連するあらゆるものに関するものである可能性があります。

研究記録日

これらの日付は、ClinicalTrials.gov への研究記録と要約結果の提出の進捗状況を追跡します。研究記録と報告された結果は、国立医学図書館 (NLM) によって審査され、公開 Web サイトに掲載される前に、特定の品質管理基準を満たしていることが確認されます。

主要日程の研究

研究開始 (推定)

2026年6月1日

一次修了 (推定)

2026年8月1日

研究の完了 (推定)

2026年12月1日

試験登録日

最初に提出

2026年5月27日

QC基準を満たした最初の提出物

2026年6月5日

最初の投稿 (実際)

2026年6月11日

学習記録の更新

投稿された最後の更新 (実際)

2026年6月11日

QC基準を満たした最後の更新が送信されました

2026年6月5日

最終確認日

2026年6月1日

詳しくは

本研究に関する用語

追加の関連 MeSH 用語

その他の研究ID番号

  • B2025-151(2)

個々の参加者データ (IPD) の計画

個々の参加者データ (IPD) を共有する予定はありますか?

いいえ

IPD プランの説明

This is an observational study analyzing aggregated, de-identified operational metrics (e.g., radiologist efficiency, report quality scores) derived from routine clinical practice. The data are not collected as part of a prospective clinical trial and are not structured for independent analysis. Findings will be disseminated through peer-reviewed publications.

医薬品およびデバイス情報、研究文書

米国FDA規制医薬品の研究

いいえ

米国FDA規制機器製品の研究

いいえ

この情報は、Web サイト clinicaltrials.gov から変更なしで直接取得したものです。研究の詳細を変更、削除、または更新するリクエストがある場合は、register@clinicaltrials.gov。 までご連絡ください。 clinicaltrials.gov に変更が加えられるとすぐに、ウェブサイトでも自動的に更新されます。

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