During the Covid-19 Pandemic
QuickStart, Inc.
July 30, 2024
We are facing overcapacity of the hospital system globally from the COVID-19 pandemic.
Not everyone admitted to the hospital for COVID requires the ICU
Can we predict whether a person will need ICU treatment?
Across 385 people treated for COVID:
163 people were moved to the ICU and 190 people never needed the ICU.
The people who needed the ICU1:
People with different ICU needs overlap substantially.
Filled missing values using neighboring values
Target feature engineering:
Feature selection
Random undersampling ‘No’ ICU need
70:15:15 train-test-validation split
Logistic regression
Decision tree
Random forest
Best features
Model tuning
Random forest model:
ICU need: Yes
ICU need: No
I recommend that the model be used to supplement medical expertise and discretion when identifying people who need more monitoring and may ultimately be moved to the ICU.
Changes from implementing the model for triage:
Model (what this model addresses):
Dataset (what we can ask of the data):
The model and data fits our primary need to quickly identify whether or not people will need the ICU.
For the work you do to meet this challenge head on with a face mask!
Capstone project