Hypernatremia subgroups among hospitalized patients by machine learning consensus clustering with different patient survival

Author(s):  
Charat Thongprayoon ◽  
Michael A. Mao ◽  
Mira T. Keddis ◽  
Andrea G. Kattah ◽  
Grace Y. Chong ◽  
...  
2021 ◽  
Vol 77 (18) ◽  
pp. 3087
Author(s):  
Naveena Yanamala ◽  
Nanda H. Krishna ◽  
Quincy Hathaway ◽  
Aditya Radhakrishnan ◽  
Srinidhi Sunkara ◽  
...  

2021 ◽  
Vol 27 ◽  
pp. 107602962199118
Author(s):  
Logan Ryan ◽  
Samson Mataraso ◽  
Anna Siefkas ◽  
Emily Pellegrini ◽  
Gina Barnes ◽  
...  

Deep venous thrombosis (DVT) is associated with significant morbidity, mortality, and increased healthcare costs. Standard scoring systems for DVT risk stratification often provide insufficient stratification of hospitalized patients and are unable to accurately predict which inpatients are most likely to present with DVT. There is a continued need for tools which can predict DVT in hospitalized patients. We performed a retrospective study on a database collected from a large academic hospital, comprised of 99,237 total general ward or ICU patients, 2,378 of whom experienced a DVT during their hospital stay. Gradient boosted machine learning algorithms were developed to predict a patient’s risk of developing DVT at 12- and 24-hour windows prior to onset. The primary outcome of interest was diagnosis of in-hospital DVT. The machine learning predictors obtained AUROCs of 0.83 and 0.85 for DVT risk prediction on hospitalized patients at 12- and 24-hour windows, respectively. At both 12 and 24 hours before DVT onset, the most important features for prediction of DVT were cancer history, VTE history, and internal normalized ratio (INR). Improved risk stratification may prevent unnecessary invasive testing in patients for whom DVT cannot be ruled out using existing methods. Improved risk stratification may also allow for more targeted use of prophylactic anticoagulants, as well as earlier diagnosis and treatment, preventing the development of pulmonary emboli and other sequelae of DVT.


2021 ◽  
Author(s):  
Awad I. Javaid ◽  
Dominique J. Monlezun ◽  
Gloria Iliescu ◽  
Phi Tran ◽  
Alexandru Filipescu ◽  
...  

2021 ◽  
Vol Publish Ahead of Print ◽  
Author(s):  
Weijie Lin ◽  
Xiulin Tian ◽  
Xin Lu ◽  
Dongfang Ma ◽  
Yifan Wu ◽  
...  

2019 ◽  
Vol 6 (7) ◽  
pp. 1239-1247 ◽  
Author(s):  
Aaron F. Struck ◽  
Andres A. Rodriguez‐Ruiz ◽  
Gamaledin Osman ◽  
Emily J. Gilmore ◽  
Hiba A. Haider ◽  
...  

2018 ◽  
Vol 46 (1) ◽  
pp. 699-699
Author(s):  
Chris Barton ◽  
David Shimabakuru ◽  
Mitchel Feldman ◽  
Samson Mataraso ◽  
Ritankar Das

2019 ◽  
Vol 37 (27_suppl) ◽  
pp. 271-271
Author(s):  
Kaitlin M. Christopherson ◽  
Christopher G. Berlind ◽  
Christopher A. Ahern ◽  
Angela Holmes ◽  
William David Lindsay ◽  
...  

271 Background: Unplanned hospitalizations may diminish quality of care among cancer patients receiving radiotherapy (RT). In patients undergoing RT for gastrointestinal (GI) cancers, we hypothesized that a machine learning approach would enable prediction of unplanned hospitalizations within 30 days of RT. Methods: We analyzed 836 abdominal (gastric, pancreatic, biliary, hepatic) and 514 pelvic (rectal, anal) courses of RT for GI cancers treated at our institution (3/2016—1/2019). Over 700 clinical/treatment variables and unplanned hospitalizations during or within 30 days after RT were mined from institutional databases. Using machine learning, we developed random forest (RF), gradient boosted decision trees (XGB), and logistic models for unplanned hospitalizations. Models were trained on 670 abdominal and 423 pelvic cases. Five-fold cross-validation (CV) was used to select model type and hyperparameters, using area under the ROC curve (AUC) to measure performance. The best model was validated on the subsequent 166 abdominal and 91 pelvic cases. AUC>0.70 was deemed clinically valid. Results: Among 1,350 cases, incidence of 30-day unplanned hospitalization was 12.3% (13.3% abdominal cohort; 10.7% pelvic cohort). Model CV AUCs are shown in table. The best models were XGB and RF for the abdominal and pelvic cohorts, respectively. Their validation testing AUCs are shown in table. For all models tested, lab values (e.g. potassium, lipoproteins, hemoglobin) prior to RT were significant predictors of unplanned hospitalizations. In the abdominal cohort, pancreatic primary and total RT dose were important. For the pelvic cohort, body mass index was important. Median healthcare costs from RT start - 30 days post-RT were $69,108 in non-hospitalized patients and $119,844 in hospitalized patients. Conclusions: In GI cancer patients undergoing RT, a machine learning model identified patients at risk of 30-day unplanned hospitalization. Predictive analytics may be a key tool to help providers identify high-risk patients and optimize interventions, while improving quality and value of care. [Table: see text]


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