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Prospective Validation of Liver Cancer Risk Computation (LIRIC) Models

Active, not recruiting
Conditions
Predictive Cancer Model
Interventions
Other: Liver Risk Computation Model (LIRIC)_cirrhosis
Other: Liver Risk Computation Model (LIRIC)
Other: Liver Risk Computation Model (LIRIC)_no_cirrhosis
Registration Number
NCT06140823
Lead Sponsor
Beth Israel Deaconess Medical Center
Brief Summary

The goal of this prospective observational cohort study is to validate previously developed Hepatocellular Carcinoma (HCC) risk prediction algorithms, the Liver Risk Computation (LIRIC) models, which are based on electronic health records.

The main questions it aims to answer are:

* Will our retrospectively developed general population LIRIC models, developed on routine EHR data, perform similarly when prospectively validated, and reliably and accurately predict HCC in real-time?

* What is the average time from model deployment and risk prediction, to the date of HCC development and what is the stage of HCC at diagnosis?

The risk model will be deployed on data from individuals eligible for the study. Each individual will be assigned a risk score and tracked over time to assess the model's discriminatory performance and calibration.

Detailed Description

The investigators will conduct a prospective observational cohort study, separately deploying three separate LIRIC models (the general population, cirrhosis, and no_cirrhosis models) on retrospective de-identified EHR data of 44 HCOs in the USA, using the TriNetX federated network platform. LIRIC will generate a risk score for each individual. All risk-stratified individuals will be prospectively, electronically followed for up to 3-years to assess the primary end-point of HCC development. At the end of this period, model discrimination will be assessed, using the following metrics: AUROC, sensitivity, specificity, PPV/NPV. Risk scores generated by the model will be divided into quantiles. For each quantile, the investigators will evaluate the following: number of individuals in each quantile, number of HCC cases, PPV, NNS, SIR. Model calibration will be used for assessing the accuracy of estimates, based on the estimated to observed number of events. The model will dynamically re-evaluate all individual data every 6 months, re-classifying individuals (as needed).

Recruitment & Eligibility

Status
ACTIVE_NOT_RECRUITING
Sex
All
Target Recruitment
6000000
Inclusion Criteria

Not provided

Exclusion Criteria
  • Personal history of HCC or current HCC (ICD-9: 155.0; ICD-10: C22.0)
  • Age below 40. The same dataset will be utilized for the non-cirrhosis validation, with exclusion of all cases with cirrhosis (ICD-9: 571.2, 571.5; ICD-10: K70, K70.3, K70.30, K70.31, K74, K74.0, K74.6, K74.60, K74.69). For the cirrhosis validation, the investigators will include only patients with the above cirrhosis codes.

Study & Design

Study Type
OBSERVATIONAL
Study Design
Not specified
Arm && Interventions
GroupInterventionDescription
Prospective cirrhosis population cohortLiver Risk Computation Model (LIRIC)_cirrhosisMales and females age \>= 40 years, with liver cirrhosis and without a personal history of HCC or current HCC, that have at least two clinical visits to their HCO, within the last year, before the study start date.
prospective general population cohortLiver Risk Computation Model (LIRIC)Males and females age \>= 40 years, without a personal history of HCC or current HCC and at least two clinical visits to their HCO, within the last year, before the study start date.
Prospective no_cirrhosis population cohortLiver Risk Computation Model (LIRIC)_no_cirrhosisMales and females age \>= 40 years, without a personal history of HCC or current HCC and without a diagnosis of liver cirrhosis, that have at least two clinical visits to their HCO, within the last year, before the study start date.
Primary Outcome Measures
NameTimeMethod
Area under the receiver operating characteristic curve (AUROC) of LIRIC for all groups stratified6 months from index date, at 1 year, 2 years and 3 years

To assess the discriminatory performance of LIRIC for prospective identification of high-risk individuals for HCC development. ROCs and AUROC numbers will be calculated for the whole population and groups stratified by age, sex, race, and geographical location.

Calibration of LIRIC for all groups stratified6 months from index date, at 1 year, 2 years and 3 years

To assess how well the risk prediction by LIRIC aligns with observed risk without recalibration. Calibration plots will be created for the whole population and groups stratified by age, sex, race, and geographical location.

Performance metrics for LIRIC model risk quantiles6 months from index date, at 1 year, 2 years and 3 years

To evaluate the sensitivity, specificity, number of individuals/number of HCC cases, PPV, NNS in each predicted risk quantile for multiple risk thresholds

Secondary Outcome Measures
NameTimeMethod
Timing of incident HCC occurrence6 months from index date, at 1 year, 2 years and 3 years

To evaluate how long in advance before HCC occurrence should be expected for LIRIC models to make high-risk predictions based on different thresholds for high-risk. Distribution plots of the date of HCC incidence for multiple risk thresholds will be created.

Tumor stage at HCC diagnosis6 months from index date, at 1 year, 2 years and 3 years

TNM staging at HCC diagnosis

Trial Locations

Locations (1)

Beth Israel Deaconess Medical Center

🇺🇸

Boston, Massachusetts, United States

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