MSD Malaysia
Assoc Principal Scientist (Assoc. Director) Real World Evidence Capability Analy
MSD Malaysia, Rahway, New Jersey, us, 07065
**Job Description:**
We are seeking a highly skilled and motivated Associate Principal Scientist/Associate Director with expertise in conducting outcome researching using real world data. This role requires the ability to analyze complex data sets, develop algorithms, and create innovative solutions to enhance our data-driven decision-making processes.
**Key Responsibilities:
Real World Data Analysis:** Analyze and interpret large volumes of structured and unstructured real-world patient level healthcare data, including but not limited to administrative claims, EHR/EMR, disease registry, and public-use databases. Develop machine learning algorithms and statistical/survival analysis models to extract meaningful insights and outcome research evidence.* Proficiency in Machine Learning and Statistical Programming using tools such as R, SAS, or Python, with a strong foundation in model development and data analysis.* Advanced SQL skills for efficient data querying, manipulation, and transaction management across complex datasets.* Extensive hands-on experience with Real-World Data (RWD) sources including administrative claims, EHR/EMR systems, patient registries, and public-use databases, with a proven track record of generating Real-World Evidence (RWE).* Expertise in cohort identification using clinical and therapeutic classification codes such as ICD-9-CM, ICD-10-CM, SNOMED, LOINC, NDC, HCPCS, and CPT.* Experience in developing study protocols for non-interventional and methodological research studies, including observational and retrospective designs.* Working knowledge of research project operations, including contracting, procurement, and budget management processes.* Strong interpersonal and communication skills, with a keen attention to detail, clarity, and precision in documentation and collaboration.* Ability to manage multiple analytical projects simultaneously, often across diverse therapeutic areas, with effective planning and organizational skills.* Master’s degree in a relevant field (e.g., Epidemiology, Biostatistics, Public Health, Data Science) with a minimum of 5 years of post-graduate experience conducting research using real-world healthcare data.* Doctoral degree (PhD, ScD, DrPH) in a related discipline with at least 2 years of post-graduate experience in real-world healthcare data research.* Strong foundational knowledge of statistical and machine learning concepts, with practical application in real-world healthcare data contexts.* Proven experience leading Real-World Evidence (RWE) studies within biomedical research or healthcare organizations.* Experience of implementing outcome research studies in following disease and therapeutical areas - heart failure, PAH, COPD, IBD, Ophthalmology* Hands-on experience applying large language models (LLMs) such as BioBERT, MedBERT, or similar, to clinical data for research purposes.* Demonstrated ability to mentor and support junior team members, fostering growth and collaboration within research teams.* Co-authorship of peer-reviewed publications involving data science methodologies, and/or active participation in data-focused competitions such as datathons, hackathons, or Kaggle challenges—ideally centered on real-world healthcare data.**Los Angeles Residents Only:** We will consider for employment all qualified applicants, including those with criminal histories, in a manner consistent with the requirements of applicable state and local laws, including the City of Los Angeles’ Fair Chance Initiative for Hiring Ordinance #J-18808-Ljbffr
We are seeking a highly skilled and motivated Associate Principal Scientist/Associate Director with expertise in conducting outcome researching using real world data. This role requires the ability to analyze complex data sets, develop algorithms, and create innovative solutions to enhance our data-driven decision-making processes.
**Key Responsibilities:
Real World Data Analysis:** Analyze and interpret large volumes of structured and unstructured real-world patient level healthcare data, including but not limited to administrative claims, EHR/EMR, disease registry, and public-use databases. Develop machine learning algorithms and statistical/survival analysis models to extract meaningful insights and outcome research evidence.* Proficiency in Machine Learning and Statistical Programming using tools such as R, SAS, or Python, with a strong foundation in model development and data analysis.* Advanced SQL skills for efficient data querying, manipulation, and transaction management across complex datasets.* Extensive hands-on experience with Real-World Data (RWD) sources including administrative claims, EHR/EMR systems, patient registries, and public-use databases, with a proven track record of generating Real-World Evidence (RWE).* Expertise in cohort identification using clinical and therapeutic classification codes such as ICD-9-CM, ICD-10-CM, SNOMED, LOINC, NDC, HCPCS, and CPT.* Experience in developing study protocols for non-interventional and methodological research studies, including observational and retrospective designs.* Working knowledge of research project operations, including contracting, procurement, and budget management processes.* Strong interpersonal and communication skills, with a keen attention to detail, clarity, and precision in documentation and collaboration.* Ability to manage multiple analytical projects simultaneously, often across diverse therapeutic areas, with effective planning and organizational skills.* Master’s degree in a relevant field (e.g., Epidemiology, Biostatistics, Public Health, Data Science) with a minimum of 5 years of post-graduate experience conducting research using real-world healthcare data.* Doctoral degree (PhD, ScD, DrPH) in a related discipline with at least 2 years of post-graduate experience in real-world healthcare data research.* Strong foundational knowledge of statistical and machine learning concepts, with practical application in real-world healthcare data contexts.* Proven experience leading Real-World Evidence (RWE) studies within biomedical research or healthcare organizations.* Experience of implementing outcome research studies in following disease and therapeutical areas - heart failure, PAH, COPD, IBD, Ophthalmology* Hands-on experience applying large language models (LLMs) such as BioBERT, MedBERT, or similar, to clinical data for research purposes.* Demonstrated ability to mentor and support junior team members, fostering growth and collaboration within research teams.* Co-authorship of peer-reviewed publications involving data science methodologies, and/or active participation in data-focused competitions such as datathons, hackathons, or Kaggle challenges—ideally centered on real-world healthcare data.**Los Angeles Residents Only:** We will consider for employment all qualified applicants, including those with criminal histories, in a manner consistent with the requirements of applicable state and local laws, including the City of Los Angeles’ Fair Chance Initiative for Hiring Ordinance #J-18808-Ljbffr