Assignment: Handle Binary Outcome

Assignment: Handle Binary Outcome
Assignment: Handle Binary Outcome
Permalink:
Objective: Using Logistic Regression to handle a binary outcome. Given the prostate cancer dataset, in which biopsy results are given for 97 men: • You are to predict tumor spread in this dataset of 97 men who had undergone a biopsy. • The measures to be used for prediction are: age, lbph, lcp, gleason, and lpsa. This implies that binary dependent variable of lcavol will be the outcome variable. We start by loading the appropriate libraries in R: ROCR, ggplot2, and aod packages as follows: > install.packages(“ROCR”) > install.packages(“ggplot2”) > install.packages(“aod”) > library(ROCR) > library(ggplot2) > library(aod) Next, we load the csv file and check the statistical properties of the csv File as follow: > setwd(“C:/RData”) # your working directory > tumor <- read.csv(“prostate.csv”) # loading the file > str(tumor) # check the properties of the file . . . continue from here! Reference R Documentation (2016). Prostate cancer data. Retrieved from http://rafalab.github.io/pages/649/prostate.html
ABSTRACT
Aims The analysis of randomized controlled trials with incomplete binary outcome data is challenging. We develop
a general method for exploring the impact of missing data in such trials, with a focus on abstinence outcomes.
Design We propose a sensitivity analysis where standard analyses, which could include ‘missing = smoking’ and ‘last
observation carried forward’, are embedded in a wider class of models. Setting We apply our general method to data
from two smoking cessation trials. Participants A total of 489 and 1758 participants from two smoking cessation
trials. Measurements The abstinence outcomes were obtained using telephone interviews. Findings The estimated
intervention effects from both trials depend on the sensitivity parameters used. The findings differ considerably in
magnitude and statistical significance under quite extreme assumptions about the missing data, but are reasonably
consistent under more moderate assumptions. Conclusions A new method for undertaking sensitivity analyses when
handling missing data in trials with binary outcomes allows a wide range of assumptions about the missing data to be
assessed. In two smoking cessation trials the results were insensitive to all but extreme assumptions.
Keywords Last observation carried forward, missing data, missing not at random, Russell Standard, sensitivity
analysis, smoking cessation trials.
Correspondence to: Dan Jackson, MRC Biostatistics Unit, Institute of Public Health, University Forvie Site, Robinson Way, Cambridge CB2 0SR, UK.
E-mail: [email protected]
Submitted 29 April 2013; initial review completed 11 November 2013; final version accepted 14 August 2014
INTRODUCTION
Missing outcome data are a common problem in
randomized controlled trials. In this paper we focus on
trials where the end-point of interest is a single binary
outcome. Binary outcome measures are widely used in
trials for smoking, alcohol and drug misuse where the
treatment goal is abstinence [1–4].
In smoking cessation trials, participants who do not
report their smoking status at follow-up are often
assumed to be smoking [5–8], and the Russell Standard
[9,10] requires this. Because smoking cessation trials
have this standard approach for handling missing
outcome data, we use smoking as our example and incorporate the Russell Standard into our methods. However,
our method is applicable to all trial areas where binary
outcome data are collected; for example, Maisel et al. [2]
found that most studies in their meta-analysis of treatments for alcohol-use disorders considered dropouts to
have relapsed. Based on an informal review, w

Don't use plagiarized sources. Get Your Custom Essay on
Assignment: Handle Binary Outcome
Get a 15% discount on this Paper
Order Essay
Quality Guaranteed

With us, you are either satisfied 100% or you get your money back-No monkey business

Check Prices
Make an order in advance and get the best price
Pages (550 words)
$0.00
*Price with a welcome 15% discount applied.
Pro tip: If you want to save more money and pay the lowest price, you need to set a more extended deadline.
We know that being a student these days is hard. Because of this, our prices are some of the lowest on the market.

Instead, we offer perks, discounts, and free services to enhance your experience.
Sign up, place your order, and leave the rest to our professional paper writers in less than 2 minutes.
step 1
Upload assignment instructions
Fill out the order form and provide paper details. You can even attach screenshots or add additional instructions later. If something is not clear or missing, the writer will contact you for clarification.
s
Get personalized services with My Paper Support
One writer for all your papers
You can select one writer for all your papers. This option enhances the consistency in the quality of your assignments. Select your preferred writer from the list of writers who have handledf your previous assignments
Same paper from different writers
Are you ordering the same assignment for a friend? You can get the same paper from different writers. The goal is to produce 100% unique and original papers
Copy of sources used
Our homework writers will provide you with copies of sources used on your request. Just add the option when plaing your order
What our partners say about us
We appreciate every review and are always looking for ways to grow. See what other students think about our do my paper service.
Psychology
I was disappointed because I didn't receive my order on time but I'm thankful to have it.
Customer 452775, December 4th, 2023
Nursing
Excellent work! Thank you again!
Customer 452707, December 20th, 2022
Nursing
Another great paper! Thank you!
Customer 452707, June 16th, 2022
Other
great
Customer 452813, June 25th, 2022
Human Resources Management (HRM)
Great Paper!
Customer 452701, August 1st, 2023
Nursing
Top notch quality!
Customer 452453, February 16th, 2023
Social Sciences
great
Customer 452813, January 7th, 2024
Other
GREAT
Customer 452813, September 20th, 2022
Other
Excellent like always
Customer 452813, January 5th, 2025
Nursing
Thank you for helping with my assignment.
Customer 452707, July 8th, 2022
Nursing
This is great! Thank you
Customer 452679, December 16th, 2021
nursing
Thank you!
Customer 452707, April 2nd, 2022
Enjoy affordable prices and lifetime discounts
Use a coupon FIRST15 and enjoy expert help with any task at the most affordable price.
Order Now Order in Chat

Ensure originality, uphold integrity, and achieve excellence. Get FREE Turnitin AI Reports with every order.