<HashMap><database>biostudies-literature</database><scores/><additional><omics_type>Unknown</omics_type><volume>18(12)</volume><submitter>Parnass G</submitter><pubmed_abstract>Environments such as shopping malls, airports, or hospital emergency-departments often experience crowding, with many people simultaneously requesting service. Crowding highly fluctuates, with sudden overcrowding "spikes". Past research has either focused on average behavior, used context-specific models with a large number of parameters, or machine-learning models that are hard to interpret. Here we show that a stochastic population model, previously applied to a broad range of natural phenomena, can aptly describe hospital emergency-department crowding. We test the model using data from five-year minute-by-minute emergency-department records. The model provides reliable forecasting of the crowding distribution. Overcrowding is highly sensitive to the patient arrival-flux and length-of-stay: a 10% increase in arrivals triples the probability of overcrowding events. Expediting patient exit-rate to shorten the typical length-of-stay by just 20 minutes (8.5%) cuts the probability of severe overcrowding events by 50%. Such forecasting is critical in prevention and mitigation of breakdown events. Our results demonstrate that despite its high volatility, crowding follows a dynamic behavior common to many systems in nature.</pubmed_abstract><journal>PloS one</journal><pagination>e0295130</pagination><full_dataset_link>https://www.ebi.ac.uk/biostudies/studies/S-EPMC10691698</full_dataset_link><repository>biostudies-literature</repository><pubmed_title>Estimating emergency department crowding with stochastic population models.</pubmed_title><pmcid>PMC10691698</pmcid><pubmed_authors>Parnass G</pubmed_authors><pubmed_authors>Assaf M</pubmed_authors><pubmed_authors>Levtzion-Korach O</pubmed_authors><pubmed_authors>Peres R</pubmed_authors></additional><is_claimable>false</is_claimable><name>Estimating emergency department crowding with stochastic population models.</name><description>Environments such as shopping malls, airports, or hospital emergency-departments often experience crowding, with many people simultaneously requesting service. Crowding highly fluctuates, with sudden overcrowding "spikes". Past research has either focused on average behavior, used context-specific models with a large number of parameters, or machine-learning models that are hard to interpret. Here we show that a stochastic population model, previously applied to a broad range of natural phenomena, can aptly describe hospital emergency-department crowding. We test the model using data from five-year minute-by-minute emergency-department records. The model provides reliable forecasting of the crowding distribution. Overcrowding is highly sensitive to the patient arrival-flux and length-of-stay: a 10% increase in arrivals triples the probability of overcrowding events. Expediting patient exit-rate to shorten the typical length-of-stay by just 20 minutes (8.5%) cuts the probability of severe overcrowding events by 50%. Such forecasting is critical in prevention and mitigation of breakdown events. Our results demonstrate that despite its high volatility, crowding follows a dynamic behavior common to many systems in nature.</description><dates><release>2023-01-01T00:00:00Z</release><publication>2023</publication><modification>2025-04-04T09:53:42.744Z</modification><creation>2025-02-19T04:23:58.052Z</creation></dates><accession>S-EPMC10691698</accession><cross_references><pubmed>38039309</pubmed><doi>10.1371/journal.pone.0295130</doi></cross_references></HashMap>