RWE Data Analyst

⭐ - Featured Role | Apply direct with Data Freelance Hub
This role is for an "RWE Data Analyst" on a 12-month remote contract, offering competitive pay. Requires a Master's in Biostatistics or related field, 8+ years of experience, proficiency in SAS/R, and strong knowledge of real-world data and observational research.
🌎 - Country
United States
💱 - Currency
$ USD
💰 - Day rate
Unknown
Unknown
🗓️ - Date discovered
April 19, 2025
🕒 - Project duration
More than 6 months
🏝️ - Location type
Remote
📄 - Contract type
Fixed Term
🔒 - Security clearance
Unknown
📍 - Location detailed
United States
🧠 - Skills detailed
#Data Analysis #NLP (Natural Language Processing) #SAP #Conda #R #SAS #Statistics #Programming
Role description

RWE Data Analyst

Location: Remote

Duration: 12-month rolling contract

Key Responsibilities

   • Develop and QC TFLs for protocols/reports/manuscripts from RWE research conducted to assess the value of the client's therapies using RWD (e.g. claims and EHR).

   • QC programming for descriptive and complex studies using RWD.

   • Conduct analyses and develop specifications for descriptive and complex statistics in studies using RWD.

   • Write the statistical analysis plan (SAP) for descriptive and complex studies using RWD, including from internal client-sponsored prospective cohort studies, claims, charge master and EHR in collaboration with RWE TA lead

   • Understand methods and programming to support Comparative Effectiveness Research (CER) analyses, as well as analyses of patient-reported outcomes (PRO) or other patient outcome data

   • Develop and QC TFLs for protocols/reports/manuscripts from RWE research conducted to assess the value of our client's therapies using RWD (e.g. claims and EHR)

   • Work with RWE researchers to generate code lists for new measures in RWD

Knowledge, Skills and Experience

   • Master’s degree (e.g. MA, MSc, MPH) in Biostatistics, Epidemiology or related discipline, such as Outcomes Research from an accredited institution, with a minimum of eight (8) years of relevant, post-graduation experience.

   • Doctoral level training with a minimum of two (2) years of relevant experience is preferred. Direct experience in lieu of academic training is acceptable.

   • Knowledge of real-world data and experience in observational research study design, execution and communication.

   • Strong track record of analysis of a broad range of RWD.

   • Formal training in Programming and demonstrated proficiency in statistical analysis programs commonly used in life sciences (e.g. SAS, R).

   • Understanding of epidemiology or outcomes research and the application of retrospective or prospective studies to generate value evidence.

   • Ability to effectively communicate statistical methodology and analysis results.

   • Ability to work effectively in a constantly changing, diverse, and matrix environment.

   • Knowledge of US secondary data sources required; additional experience with international data sources is preferred.

   • Knowledge and experience in qualitative analysis and data sets (e.g., free-text natural language processing, survey data) is preferred.