predicting the survival time for bladder cancer using an addi-tive hazards model in microarray data
نویسندگان
چکیده
background: one substantial part of microarray studies is to predict patients’ survival based on their gene expression profile. variable selection techniques are powerful tools to handle high dimensionality in analysis of microarray data. however, these techniques have not been investigated in competing risks setting. this study aimed to investigate the performance of four sparse variable selection methods in estimating the survival time. methods: the data included 1381 gene expression measurements and clinical information from 301 patients with bladder cancer operated in the years 1987 to 2000 in hospitals in denmark, sweden, spain, france, and england. four methods of the least absolute shrinkage and selection operator, smoothly clipped absolute deviation, the smooth integration of counting and absolute deviation and elastic net were utilized for simultaneous variable selection and estimation under an additive hazards model. the criteria of area under roc curve, brier score and c-index were used to compare the methods. results: the median follow-up time for all patients was 47 months. the elastic net approach was indicated to outperform other methods. the elastic net had the lowest integrated brier score (0.137±0.07) and the greatest median of the over-time auc and c-index (0.803±0.06 and 0.779±0.13, respectively). five out of 19 selected genes by the elastic net were significant ( p <0.05) under an additive hazards model. it was indicated that the expression of rtn4, son, igf1r and cdc20 decrease the survival time, while the expression of smarcad1 increase it. conclusion: the elastic net had higher capability than the other methods for the prediction of survival time in patients with bladder cancer in the presence of competing risks base on additive hazards model.
منابع مشابه
Predicting the Survival Time for Bladder Cancer Using an Additive Hazards Model in Microarray Data
BACKGROUND One substantial part of microarray studies is to predict patients' survival based on their gene expression profile. Variable selection techniques are powerful tools to handle high dimensionality in analysis of microarray data. However, these techniques have not been investigated in competing risks setting. This study aimed to investigate the performance of four sparse variable select...
متن کاملUsing data mining techniques for predicting the survival rate of breast cancer patients: a review article
This review was conducted between December 2018 and March 2019 at Isfahan University of Medical Sciences. A review of various studies revealed what data mining techniques to predict the probability of survival, what risk factors for these predictions, what criteria for evaluating data mining techniques, and finally what data sources for it have been used to predict the surv...
متن کاملPredicting the survival time for diffuse large B-cell lymphoma using microarray data
The present study was conducted to predict survival time in patients with diffuse large B-cell lymphoma, DLBCL, based on microarray data using Cox regression model combined with seven dimension reduction methods. This historical cohort included 2042 gene expression measurements from 40 patients with DLBCL. In order to predict survival, a combination of Cox regression model was used with seven m...
متن کاملthe use of appropriate madm model for ranking the vendors of mci equipments using fuzzy approach
abstract nowadays, the science of decision making has been paid to more attention due to the complexity of the problems of suppliers selection. as known, one of the efficient tools in economic and human resources development is the extension of communication networks in developing countries. so, the proper selection of suppliers of tc equipments is of concern very much. in this study, a ...
15 صفحه اولpredicting the categories of colon cancer using microarray data and nearest shrunken centroid
b a c k g r o u n d & aim: it is very helpful to classify and predict the clinical category of a sample based on its gene expression profile. this study was conducted to predict tissues of colorectal adenoma, adenocarcinoma, and paired normal in colon based on microarray data using nearest shrunken centroid method. methods & materials: in this study, the co...
متن کاملmetrics for the detection of changed buildings in 3d old vector maps using als data (case study: isfahan city)
هدف از این تحقیق، ارزیابی و بهبود متریک های موجود جهت تایید صحت نقشه های قدیمی سه بعدی برداری با استفاده از ابر نقطه حاصل از لیزر اسکن جدید شهر اصفهان می باشد . بنابراین ابر نقطه حاصل از لیزر اسکنر با چگالی حدودا سه نقطه در هر متر مربع جهت شناسایی عوارض تغییر کرده در نقشه های قدیمی سه بعدی استفاده شده است. تمرکز ما در این تحقیق بر روی ساختمان به عنوان یکی از اصلی ترین عارضه های شهری می باشد. من...
منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
iranian journal of public healthجلد ۴۵، شماره ۲، صفحات ۲۳۹-۲۴۸
میزبانی شده توسط پلتفرم ابری doprax.com
copyright © 2015-2023