From Health Data Management
Imagine this scenario: A patient named John has waited 5.5 years for a much-needed kidney transplant. One day, he learns that a deceased donor kidney is available and that he is the 153rd patient to whom this kidney was offered.
Clearly, this is not a “high-quality” organ if it was declined by 152 patients or the clinicians treating them. But because John has been waiting a long time for a new kidney, should he accept or decline the kidney? And can analytics and machine learning help make that decision easier?
Currently, that decision is usually made by John’s doctor based on a variety of factors, such as John’s current overall health status on dialysis and a gut instinct about whether (and when) John will get a better offer for a healthier kidney.
If John is young and relatively healthy, the risk of prematurely accepting a lower-quality kidney is future organ failure and more surgeries. If John’s health status is critical and he rejects the kidney, he could be underestimating how long it will take until a higher-quality organ is available. The decision could be a matter of life or death.
John’s dilemma isn’t unique in the world of kidney transplantation, where current demand outpaces supply. Since 2002, the number of candidates on the waiting list has nearly doubled, from slightly more than 50,000 to more than 96,000 in 2013. During the same time, live donation rates have decreased. Complicating this problem of supply and demand is an unacceptably high deceased donor organ discard rate, as much as 50 percent in some instances.
The desire to provide patients with the highest quality organ has the potential to become the doctors’ Achilles heel. In striving to maximize patient outcomes for an individual patient, the discard rate could increase. This crossroads of physicians’ semi-quantitative calculus of a patient’s health factors and “gut instinct” would greatly benefit from a data-driven tool to assist in this complex decision-making process.
MIT Sloan and Massachusetts General Hospital have developed an analytics tool to help doctors in deceased-kidney acceptance decisions. The model aims to calculate the probability of a patient being offered a deceased-donor kidney of a certain quality level within a specific time frame (three, six, or 12 months), given their individual characteristics. Using machine learning, it looks at 10 years of data and millions of prior decisions to estimate a patient’s waiting time in the context of a current active organ offer until the time to the next offer for a higher quality kidney.
As for accuracy, this model was tested against real outcomes in different states. For example, in California, the actual probability of getting a high-quality kidney in the next six months for a patient with John’s same health factors was 1.3 to 1.7 percent—the model predicted 2 percent. In Maryland, the actual probability was 8 percent to 16 percent, and the model predicted 10.4 percent. In New York, the actual probability was 3 percent to 10 percent, and the model predicted 5.4 percent. Overall, the estimation of accuracy (AUC) was 87 percent, which illustrates that the model produces credible predictions.
Read the full post at Health Data Management.
Dimitris Bertsimas is the Boeing Leaders for Global Operations Professor of Management, a Professor of Operations Research, the CoDirector of the Operations Research Center and the Director of the Master of Business Analytics at MIT.
Nikolaos (Nikos) Trichakis is the Zenon Zannetos (1955) Career Development Professor and an Assistant Professor of Operations Management at the MIT Sloan School of Management.