Using AI to Improve Clinical Outcomes

Clinical Data Science

We are a team of data scientists and engineers that leverage the power of ML and AI at Mount Sinai Hospital.

Clinical Conditions

Data science, machine learning (ML) and artificial intelligence (AI) have the potential to transform the delivery of clinical care and improve early recognition and diagnosis of clinical conditions

Hospital Operations

AI allows us to gain new insights and continuously improve over time as the platform learns from our patients and clinicians to enhance hospital operations

Awareness and Intervention

We have built a powerful real-time streaming clinical data platform that brings the power of ML and AI to improve provider awareness and timely intervention

Delirium Risk Prediction (v1.1)

Delirium Risk Prediction (v1.1)

The Delirium Risk Prediction tool was developed to predict which patients who have not yet been discharged, might have a delirium episode. Delirium can be defined as a serious change in mental abilities. This project was deployed at Mount Sinai Morningside in December...

CDI Alert System for Metastatic Disease

CDI Alert System for Metastatic Disease

The Metastatic streaming engine was developed to identify inpatient encounters with high risk of metastatic disease (cancer that spreads from where it started to a distant part of the body) and optimize the capture rate. It was deployed at Mount Sinai Hospital on...

Oncology Prognosis Tool

Oncology Prognosis Tool

The Oncology Prognosis Tool is a classifier used to determine the eligibility of patients for serious illness conversation. It was deployed at the Mount Sinai Oncology Outpatient unit in March 2021 and Inpatient unit in August 2022. Challenges Majority of patients(~...

Patient Experience Project

Patient Experience Project

The objective of the Patient Experience project is to predict patients who are most likely to report a sub-optimal inpatient experience in order to initiate service recovery, or other engagement strategies of the patient experience team, prior to discharge. The...