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aa1823/readme.md

Welcome!

🔬 Who Am I?: I am a scientist that wears many hats. By training, I'm a Biostatistician with a Master's degree from California State University, but I also have a background in data analytics and data science. My journey in data analysis and statistical programming has been driven by a long-standing deep interest in public health epidemiology.

📊 My Experience: Previously, I've done modeling work to learn about the impact of diet on cardiovascular disease in US adults. My current focus: working with my lab to analyze the impact of certain xenobiotics on bronchopulmonary dysplasia in infants.

🌟 My Goal: My current goal is to improve and expand my statistical knowledge and skillset to better answer unsolved questions in the public health arena. I hope to one day give back and make great contributions to the field of biostatistics in a way that has a massive positive impact on people's health from all walks of life--whether locally or globally.

❤️‍🔥 My Hobbies: In my free time I like to learn new things, meditate, read, write, and analyze sports data. My current passion projects include: learning Python, studying African history, making art, and indoor-gardening.

Highlighted Projects

🧬 Survival Analysis: Unraveling Factors in Post-Transplant Disease

Paper | Repository

  • Objective: To identify factors influencing chronic graft-versus-host disease onset in allogeneic bone marrow transplant recipients across 4 different clinical sites: The Ohio State University Hospitals, Hahnemann in Philadephia, St. Vincent's Hospital in Sydney, Australia, and Alfred Hospital in Melbourne.
  • Analysis/Tools: Survival analysis techniques in SAS: Kaplan-Meier, AFT modeling.
  • Outcome: Uncovered disparities in CGVHD onset across different demographics and clinical sites; St. Vincent patients experiencing a 35% longer time to CGVHD and Alfred patients experiencing a 10.3% shorter time.

🏀 Forecasting Wins and Losses with Machine Learning

Presentation | Repository

  • Focus: Forecasted the full 82 game season performance of the Lakers using data from 73 games.
  • Analysis/Tools: Applied linear discriminant analysis to predict win-loss records.
  • Outcome: Forecasted that had the Lakers played all 82 games, they would have won 55 games, and lost 27, with a final win percentage of 67% and a loss percentage of 33%.

⛹🏾 ️ Regression Analysis of the Lakers' Regular Season

Presentation | Repository

  • Focus: Developing a predictive model for the Lakers' points per game using 5 key features.
  • Analysis: Multiple linear regression in R.
  • Outcome: Model explained 86% of the variance in the team's performance.

🫀 Tall People and Risk of Cardiovascular Disease

Presentation | Repository

  • Focus: Investigating the correlation between height and cardiovascular disease.
  • Analysis: Examined a large dataset from Kaggle.
  • Outcome: Identified a 47% probability of CVD in taller individuals.

🫘 Fixed-Effect Analysis of Baseline Serum Creatinine across sex and blood pressure levels

Presentation | Repository

  • Focus: Is there an observable difference in baseline creatinine levels and blood pressure between sexes.
  • Analysis: Examined a kaggle dataset of electronic medical records of 491 patients from Tawam hospital in Al-Ain city in the United Arab Emirates in 2008 using SAS.
  • Outcome: There is a difference in baseline creatinine across sexes, and it is statistically significant. On average, women over 20 µmol/L lower compared to men in the dataset. There was no effect of blood pressure on serum creatinine.

Pinned

  1. CKDproj CKDproj Public

    ANOVA on Chronic Kidney Disease from data collected Electronic medical records of 491 patients collected at the Tawam Hospital in Al-Ain city (Abu Dhabi, United Arab Emirates), between 1st January …

    SAS

  2. survGVHD survGVHD Public

    Survival Analysis of time-to-Chronic Graft-versus-Host Disease in leukemia patient event data across 4 clinical sites with respect to 5 clinical characteristics: age, sex, cytomegalovirus immune st…

  3. cvdheight cvdheight Public

    Analysis of patient data from a kaggle dataset to assess if tall people's risk of developing cardiovascular disease was higher than short people's.

    SAS

  4. Forecasting-Wins-and-Losses-with-Machine-Learning Forecasting-Wins-and-Losses-with-Machine-Learning Public

    Using Linear Discriminant Analysis - analyzing 2019-2020 regular season data to determine if there would be a difference in Lakers' regular season standing if the 2020 pause during the COVID-19 pan…

  5. MLRLakers2122 MLRLakers2122 Public

    Multiple Linear Regression Analysis of the Lakers 21-22 Regular Season - assessing if 5 key predictors (FT%, FG%, games played, personal fouls, steals, and blocks) are good indicators of PPG perfor…