Applications of Data Science and Artificial Intelligence to Decision Making in Healthcare and Finance

Decision-making requires timely and accurate information in order to understand the implications of the actions and to manage the potential risk. This thesis presents computational methods to quantify risk in drug development programs, address current challenges in health economics, and investigate...

Full description

Bibliographic Details
Main Author: Wong, Chi Heem
Other Authors: Lo, Andrew W.
Format: Thesis
Published: Massachusetts Institute of Technology 2022
Online Access:https://hdl.handle.net/1721.1/138922
https://orcid.org/0000-0002-4899-5022
_version_ 1826206124451299328
author Wong, Chi Heem
author2 Lo, Andrew W.
author_facet Lo, Andrew W.
Wong, Chi Heem
author_sort Wong, Chi Heem
collection MIT
description Decision-making requires timely and accurate information in order to understand the implications of the actions and to manage the potential risk. This thesis presents computational methods to quantify risk in drug development programs, address current challenges in health economics, and investigate and predict rare events in finance. The thesis is split into three major parts. Part I addresses a core issue in accessing the risk and value of drug development programs: the probability of success (PoS). We introduce a Markov chain model of a drug development program that allows us to fill in missing data and infer phase transitions from clinical trial metadata. We investigate the PoSs across various therapeutic areas, and then conduct further analysis for areas that are of public interest (e.g., oncology, vaccine, and anti-infective therapeutic) in order to understand the bottlenecks in the drug development process. Part II of the thesis focuses on the use of modeling and simulations to make informed predictions and drive policy-making in healthcare. One chapter in this Part is devoted to the use of data to estimate the financial impact of gene therapy in the U.S. between 2020 and 2035, while another chapter is dedicated to estimating the cost and benefit of various clinical trial designs for the development of a vaccine to prevent COVID-19. Part III presents a novel 'big data' analysis and machine learning prediction model of panic selling behavior by retail investors. We document the frequency and timing of panic selling, analyze the demographics of investors who tend to freak out and panic sell, and determine if panic selling is a detrimental or optimal action financially. We also develop machine learning models to predict if an investor might panic sell in the near future given the demographic characteristics of the investor, their portfolio history, and the current and past market conditions.
first_indexed 2024-09-23T13:24:28Z
format Thesis
id mit-1721.1/138922
institution Massachusetts Institute of Technology
last_indexed 2024-09-23T13:24:28Z
publishDate 2022
publisher Massachusetts Institute of Technology
record_format dspace
spelling mit-1721.1/1389222022-01-15T03:26:58Z Applications of Data Science and Artificial Intelligence to Decision Making in Healthcare and Finance Wong, Chi Heem Lo, Andrew W. Massachusetts Institute of Technology. Department of Electrical Engineering and Computer Science Decision-making requires timely and accurate information in order to understand the implications of the actions and to manage the potential risk. This thesis presents computational methods to quantify risk in drug development programs, address current challenges in health economics, and investigate and predict rare events in finance. The thesis is split into three major parts. Part I addresses a core issue in accessing the risk and value of drug development programs: the probability of success (PoS). We introduce a Markov chain model of a drug development program that allows us to fill in missing data and infer phase transitions from clinical trial metadata. We investigate the PoSs across various therapeutic areas, and then conduct further analysis for areas that are of public interest (e.g., oncology, vaccine, and anti-infective therapeutic) in order to understand the bottlenecks in the drug development process. Part II of the thesis focuses on the use of modeling and simulations to make informed predictions and drive policy-making in healthcare. One chapter in this Part is devoted to the use of data to estimate the financial impact of gene therapy in the U.S. between 2020 and 2035, while another chapter is dedicated to estimating the cost and benefit of various clinical trial designs for the development of a vaccine to prevent COVID-19. Part III presents a novel 'big data' analysis and machine learning prediction model of panic selling behavior by retail investors. We document the frequency and timing of panic selling, analyze the demographics of investors who tend to freak out and panic sell, and determine if panic selling is a detrimental or optimal action financially. We also develop machine learning models to predict if an investor might panic sell in the near future given the demographic characteristics of the investor, their portfolio history, and the current and past market conditions. Ph.D. 2022-01-14T14:38:07Z 2022-01-14T14:38:07Z 2021-06 2021-06-23T19:40:51.523Z Thesis https://hdl.handle.net/1721.1/138922 https://orcid.org/0000-0002-4899-5022 In Copyright - Educational Use Permitted Copyright MIT http://rightsstatements.org/page/InC-EDU/1.0/ application/pdf Massachusetts Institute of Technology
spellingShingle Wong, Chi Heem
Applications of Data Science and Artificial Intelligence to Decision Making in Healthcare and Finance
title Applications of Data Science and Artificial Intelligence to Decision Making in Healthcare and Finance
title_full Applications of Data Science and Artificial Intelligence to Decision Making in Healthcare and Finance
title_fullStr Applications of Data Science and Artificial Intelligence to Decision Making in Healthcare and Finance
title_full_unstemmed Applications of Data Science and Artificial Intelligence to Decision Making in Healthcare and Finance
title_short Applications of Data Science and Artificial Intelligence to Decision Making in Healthcare and Finance
title_sort applications of data science and artificial intelligence to decision making in healthcare and finance
url https://hdl.handle.net/1721.1/138922
https://orcid.org/0000-0002-4899-5022
work_keys_str_mv AT wongchiheem applicationsofdatascienceandartificialintelligencetodecisionmakinginhealthcareandfinance