a-ads798

Search This Blog

nativeadstera

aads970+250

729adst

798+90yilix

admetex 790+90

ad2bitcoin 728+90

zerads 728+90

aads468+60

zerads 468+60

admetex 460+60

aadsadaptabl

mob ylix

468+60asdster

468+60yilix

aads referal

ad2bit460+60

 


ABSTRACT


External validation is a prerequisite in order for a prediction model to be introduced into clinical practice. Nonetheless, methodologically intact external validation studies are a scarce finding. Utilization of big datasets can help overcome several causes of methodological failure. However, transparent reporting is needed to standardize the methods, assess the risk of bias and synthesize multiple validation studies in order to infer model generalizability. We describe the methodological challenges faced when using multiple big datasets to perform the first retrospective external validation study of the Prospective Comparison of Methods for thromboembolic risk assessment with clinical Perceptions and AwareneSS in real life patients-Cancer Associated Thrombosis (COMPASS-CAT) Risk Assessment Model for predicting venous thromboembolism in patients with cancer. The challenges included choosing the starting point, defining time sensitive variables that serve both as risk factors and outcome variables and using non-research oriented databases to form validated definitions from administrative codes. We also present the structured plan we used so as to overcome those obstacles and reduce bias with the target of producing an external validation study that successfully complies with prediction model reporting guidelines.


PMID:32564180 | DOI:10.1007/s11239-020-02191-8

05:04

PubMed articles on: Cardio-Oncology

High molecular weight kininogen contributes to early mortality and kidney dysfunction in a mouse model of sickle cell disease


Sparkenbaugh EM, et al. J Thromb Haemost 2020.


No comments:

Post a Comment

اكتب تعليق حول الموضوع

728x90'ads

Search This Blog