Purpose: It was of great significance to identify someone with a high risk of hepatocellular carcinoma (HCC) occurrence and make a diagnosis as early as possible. Therefore, we aimed to develop and validate a new, objective, and accurate prediction model, and convert it into a nomogram to make a personalized prediction of cancer occurrence in cirrhotic patients with different etiologies.
Methods: The present study included 938 patients with cirrhosis from January 1, 2011, to December 31, 2012. Patients were prospectively followed-up until January 1, 2018. We used a competing risk model and the Fine-Gray test to develop and validate the prediction model and to plot a nomogram based on the model established.
Results: At the end of follow-up, 202 (21.5%) patients developed HCC, with a 5-year incidence of 19.0% (corrected for competing risk model). Based on the competing risk regression method, we built a prediction model including age, gender, etiology, lymphocyte, and A/G ratio. Three groups with different risks were generated on account of tertiles of the 5-year risk predicted by the model. The cumulative 1-, 3-, and 5-year incidences of HCC were 2.0%, 20.8%, and 42.3% in high-risk group, 0.9%, 10.1%, and 17.7% in medium-risk group, and 0%, 2.0%, 8.5% in low-risk group (P < 0.001). The model showed excellent discrimination and calibration in predicting the risk of HCC occurrence in patients with all-cause cirrhosis.
Conclusion: The model could make an individual prediction of cancer occurrence and stratify patients based on predicted risk, regardless of the causes of cirrhosis.
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http://dx.doi.org/10.1007/s00432-023-04911-y | DOI Listing |
Ann Surg
March 2025
Health Care Delivery Research, Mayo Clinic Florida.
Objective: This study addressed whether kidney transplant (KTx) candidates, ages 60+, should accept a high KDPI kidney and differences when considering a high (>85% vs low (<85%) KDPI KTx.
Summary/background Data: To date, there is limited survival data to guide decision-making for patients aged 60 years and older who are faced with the choice of accepting a high KDPI kidney or remaining on the waitlist.
Methods: Propensity-matched cohort study using data from United Network on Organ Sharing (2014-2021).
R Soc Open Sci
March 2025
School of Psychology, UNSW, Sydney, New South Wales 2052, Australia.
The goal of the Paris Agreement is to keep global temperature rise well below 2°C. In this agreement-and its antecedents negotiated in Copenhagen and Cancun-the fear of crossing a dangerous climate threshold is supposed to serve as the catalyst for cooperation among countries. However, there are deep uncertainties about the location of the threshold for dangerous climate change, and recent evidence indicates this threshold uncertainty is a major impediment to collective action.
View Article and Find Full Text PDFR Soc Open Sci
March 2025
Interface Analysis Centre, HH Wills Physics Laboratory, School of Physics, University of Bristol, Bristol, UK.
Transplantation is the standard treatment for end-stage kidney disease but carries with it a non-trivial risk of post-operative complication. There is a need for a continuous, real-time, not additionally invasive method of monitoring organ perfusion. We present an approach to allograft perfusion monitoring using a human kidney model using normothermic perfusion (EVNP) and custom spectroscopic optical reflectance probes.
View Article and Find Full Text PDFCamb Prism Extinct
November 2024
School of Biology, Faculty of Biological Sciences, University of Leeds, Leeds, UK.
Biodiversity shortfalls and taxonomic bias can lead to inaccurate assessment of conservation priorities. Previous literature has begun to explore practical reasons why some species are discovered sooner or are better researched than others. However, the deeper socio-cultural causes for undiscovered and neglected biodiversity, and the value of collectively analysing species at risk of unrecorded, or "dark", extinction, are yet to be fully examined.
View Article and Find Full Text PDFCamb Prism Extinct
December 2024
The Environment Institute and School of Biological Sciences, University of Adelaide, Adelaide, SA 5005, Australia.
Accurately predicting the vulnerabilities of species to climate change requires a more detailed understanding of the functional and life-history traits that make some species more susceptible to declines and extinctions in shifting climates. This is because existing trait-based correlates of extinction risk from climate and environmental disturbances vary widely, often being idiosyncratic and context dependent. A powerful solution is to analyse the growing volume of biological data on changes in species ranges and abundances using process-explicit ecological models that run at fine temporal and spatial scales and across large geographical extents.
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