Combining simple blood tests to identify primary care patients with unexpected weight loss for cancer investigation: Clinical risk score development, internal validation, and net benefit analysis

Unexpected weight loss (UWL) is a presenting feature of cancer in primary care. Existing research proposes simple combinations of clinical features (risk factors, symptoms, signs, and blood test data) that, when present, warrant cancer investigation. More complex combinations may modify cancer risk...

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Veröffentlicht in:PLoS medicine 2021-08, Vol.18 (8), p.e1003728-e1003728
Hauptverfasser: Nicholson, Brian D, Aveyard, Paul, Koshiaris, Constantinos, Perera, Rafael, Hamilton, Willie, Oke, Jason, Hobbs, F. D. Richard
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container_issue 8
container_start_page e1003728
container_title PLoS medicine
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creator Nicholson, Brian D
Aveyard, Paul
Koshiaris, Constantinos
Perera, Rafael
Hamilton, Willie
Oke, Jason
Hobbs, F. D. Richard
description Unexpected weight loss (UWL) is a presenting feature of cancer in primary care. Existing research proposes simple combinations of clinical features (risk factors, symptoms, signs, and blood test data) that, when present, warrant cancer investigation. More complex combinations may modify cancer risk to sufficiently rule-out the need for investigation. We aimed to identify which clinical features can be used together to stratify patients with UWL based on their risk of cancer. We used data from 63,973 adults (age: mean 59 years, standard deviation 21 years; 42% male) to predict cancer in patients with UWL recorded in a large representative United Kingdom primary care electronic health record between January 1, 2000 and December 31, 2012. We derived 3 clinical prediction models using logistic regression and backwards stepwise covariate selection: Sm, symptoms-only model; STm, symptoms and tests model; Tm, tests-only model. Fifty imputations replaced missing data. Estimates of discrimination and calibration were derived using 10-fold internal cross-validation. Simple clinical risk scores are presented for models with the greatest clinical utility in decision curve analysis. The STm and Tm showed improved discrimination (area under the curve [greater than or equal to] 0.91), calibration, and greater clinical utility than the Sm. The Tm was simplest including age-group, sex, albumin, alkaline phosphatase, liver enzymes, C-reactive protein, haemoglobin, platelets, and total white cell count. A Tm score of 5 balanced ruling-in (sensitivity 84.0%, positive likelihood ratio 5.36) and ruling-out (specificity 84.3%, negative likelihood ratio 0.19) further cancer investigation. A Tm score of 1 prioritised ruling-out (sensitivity 97.5%). At this threshold, 35 people presenting with UWL in primary care would be referred for investigation for each person with cancer referred, and 1,730 people would be spared referral for each person with cancer not referred. Study limitations include using a retrospective routinely collected dataset, a reliance on coding to identify UWL, and missing data for some predictors. Our findings suggest that combinations of simple blood test abnormalities could be used to identify patients with UWL who warrant referral for investigation, while people with combinations of normal results could be exempted from referral.
doi_str_mv 10.1371/journal.pmed.1003728
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subjects Age
Alkaline phosphatase
Biology and Life Sciences
Blood
Blood tests
Body weight loss
C-reactive protein
Cancer
Cancer patients
Clinical medicine
Codes
Datasets
Diagnosis
Electronic medical records
Ethics
Gastrointestinal surgery
Health aspects
Hemoglobin
Identification and classification
Medical diagnosis
Medical examination
Medicine and Health Sciences
Methods
Patients
Prediction models
Primary care
Primary health care
Regression analysis
Risk factors
Variables
Weight loss
title Combining simple blood tests to identify primary care patients with unexpected weight loss for cancer investigation: Clinical risk score development, internal validation, and net benefit analysis
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