Overstay2 scoring model for HSC

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This page describes the Overstay2 scoring model for HSC for the Project Overstay2, one of the site-based Overstay2 scoring models. The model and the Data definition for factor candidates for the Overstay2 project it uses were developed in Re-analysis and generation of Overstay2 model and is used to generate the Overstay2 colour, which in turn drives the Overstay2 processes on the units to reduce discharge delay.


Data elements and assigned coefficients

The binary logistic regression Y (Overstay GE 10 Days) which gave the AUC C-index =0.789 implying better predicted model and Hosmer and Lemeshow Goodness of fit test Chi-Square value of 10.5443 (prob=0.2289) is :

LN(OS/1-OS) = Y

Y = Intercept Estimate + sum of all the rest of (the Parameter values multiplied by the Estimate) listed below:

Parameter Estimate Prob > ChiSq
Intercept -6.628750489 <.0001
Age 0.020816662 <.0001
Homeless 0.73542220 0.0048
MB_Winnipeg 0.462297834 0.0009
Dementia 0.444548081 0.0472
Trach 1.439221519 0.0003
ADL_bath 0.407661477 <.0001
ADL_feed 0.066130137 0.0521
ADL_continence 0.09033481 0.0074
ADL_Adlmean_nh -0.095015407 0.0024
ADL_Adlmean_age -0.000470209 0.0190

Where OS is the likelihood to overstay 10 days and beyond.

How to calculate OS:

  • OS = exp(Y) / (1 + exp(Y)
  • The model gave a 0.043 optimum cut-off probability for OS GE 10 Days with sensitivity = 71.0%, the rate of identifying OS GE 10d out of the patients who actually have OS GE 10d and with specificity = 71.7%, the rate of identifying OS LT 10d out of the patients who actually have OS LT 10d. This cut-off point of 0.043 will result to 28.3% rate of identifying OS GE 10d out of the patients who actually have OS LT 10d. Increasing the cut off predicted probability of (Overstay >= 10 days) to 0.054 resulted to sensitivity = 66.6%, thus reducing the rate of identifying OS GE 10d out of the patients who actually have OS LT 10d to 24.2%. Thus a predicted probability of (Overstay >= 10 days) of 0.054 is going to be used to classify patients into two groups; Overstay >= 10 days and Overstay < 10 days. See more discussion on Overstay2 colour.
  • The model has been validated using the data from the validation set of same period. The AUC C-index = 0.0.787, the Hosmer and Lemeshow Goodness of fit test Chi-Square value = 10.4037 (prob=0.2346) and the optimum cut-off probability for OS = 0.043 with sensitivity = 71.6% and specificity = 71.5%.

Log

  • 2025-06-09 no work yet

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