Mental Hygiene Services in Rural Areas: The Program of the Mental Hygiene Division, Suffolk County Department of Health, New York

1942 ◽  
Vol 57 (31) ◽  
pp. 1115 ◽  
Author(s):  
George M. Lott
2008 ◽  
Vol 23 (2) ◽  
pp. 166-173 ◽  
Author(s):  
Christopher W. Freyberg ◽  
Bonnie Arquilla ◽  
Baruch S. Fertel ◽  
Michael G. Tunik ◽  
Arthur Cooper ◽  
...  

AbstractIn recent years, attention has been given to disaster preparedness for first responders and first receivers (hospitals). One such focus involves the decontamination of individuals who have fallen victim to a chemical agent from an attack or an accident involving hazardous materials. Children often are overlooked in disaster planning. Children are vulnerable and have specific medical and psychological requirements. There is a need to develop specific protocols to address pediatric patients who require decontamination at the entrance of hospital emergency departments. Currently, there are no published resources that meet this need. An expert panel convened by the New York City Department of Health and Mental Hygiene developed policies and procedures for the decontamination of pediatric patients.The panel was comprised of experts from a variety of medical and psychosocial areas.Using an iterative process, the panel created guidelines that were approved by the stakeholders and are presented in this paper.These guidelines must be utilized, studied, and modified to increase the likelihood that they will work during an emergency situation.


2020 ◽  
Author(s):  
Mingwang Shen ◽  
Jian Zu ◽  
Christopher K. Fairley ◽  
José A. Pagán ◽  
Bart Ferket ◽  
...  

ABSTRACTBackgroundNew York City (NYC) was the epicenter of the COVID-19 pandemic in the United States. On April 17, 2020, the State of New York implemented an Executive Order that requires all people in New York to wear a face mask or covering in public settings where social distancing cannot be maintained. It is unclear how this Executive Order has affected the spread of COVID-19 in NYC.MethodsA dynamic compartmental model of COVID-19 transmission among NYC residents was developed to assess the effect of the Executive Order on face mask use on infections and deaths due to COVID-19 in NYC. Data on daily and cumulative COVID-19 infections and deaths were obtained from the NYC Department of Health and Mental Hygiene.ResultsThe Executive Order on face mask use is estimated to avert 99,517 (95% CIs: 72,723-126,312) COVID-19 infections and 7,978 (5,692-10,265) deaths in NYC. If the Executive Order was implemented one week earlier (on April 10), the averted infections and deaths would be 111,475 (81,593-141,356) and 9,017 (6,446-11,589), respectively. If the Executive Order was implemented two weeks earlier (on April 3 when the Centers for Disease Control and Prevention recommended face mask use), the averted infections and deaths would be 128,598 (94,373-162,824) and 10,515 (7,540-13,489), respectively.ConclusionsNew York’s Executive Order on face mask use is projected to have significantly reduced the spread of COVID-19 in NYC. Implementing the Executive Order at an earlier date would avert even more COVID-19 infections and deaths.


2018 ◽  
Vol 25 (12) ◽  
pp. 1586-1592 ◽  
Author(s):  
Thomas Effland ◽  
Anna Lawson ◽  
Sharon Balter ◽  
Katelynn Devinney ◽  
Vasudha Reddy ◽  
...  

Abstract Objective We developed a system for the discovery of foodborne illness mentioned in online Yelp restaurant reviews using text classification. The system is used by the New York City Department of Health and Mental Hygiene (DOHMH) to monitor Yelp for foodborne illness complaints. Materials and Methods We built classifiers for 2 tasks: (1) determining if a review indicated a person experiencing foodborne illness and (2) determining if a review indicated multiple people experiencing foodborne illness. We first developed a prototype classifier in 2012 for both tasks using a small labeled dataset. Over years of system deployment, DOHMH epidemiologists labeled 13 526 reviews selected by this classifier. We used these biased data and a sample of complementary reviews in a principled bias-adjusted training scheme to develop significantly improved classifiers. Finally, we performed an error analysis of the best resulting classifiers. Results We found that logistic regression trained with bias-adjusted augmented data performed best for both classification tasks, with F1-scores of 87% and 66% for tasks 1 and 2, respectively. Discussion Our error analysis revealed that the inability of our models to account for long phrases caused the most errors. Our bias-adjusted training scheme illustrates how to improve a classification system iteratively by exploiting available biased labeled data. Conclusions Our system has been instrumental in the identification of 10 outbreaks and 8523 complaints of foodborne illness associated with New York City restaurants since July 2012. Our evaluation has identified strong classifiers for both tasks, whose deployment will allow DOHMH epidemiologists to more effectively monitor Yelp for foodborne illness investigations.


Author(s):  
Briana Lui ◽  
Michelle Zheng ◽  
Robert S White ◽  
Marguerite Hoyler

Aim: To examine the economic impact of lives lost due to the COVID-19 pandemic across New York State. Materials & methods: Death counts by age range and period life expectancy were extracted from the NYS Department of Health, NYC Department of Health and Mental Hygiene, and Social Security Administration website. Years of potential life lost and value of statistical life (VSL) were calculated. Results: The average years of potential life lost per person was 12.72 and 15.13, and the VSL was US$119.62 and 90.45 billion, in NYS and NYC, respectively. VSL was greatest in Queens and Brooklyn, followed by the Bronx, Manhattan and Staten Island. Conclusion: New York City, specifically Queens and Brooklyn, bore the greatest economic burden of lives lost across the state.


2018 ◽  
Vol 12 (6) ◽  
pp. 759-764
Author(s):  
Dennis Darrin Pruitt ◽  
Erkan Gunay

AbstractThere is little existing in the literature that provides a definition of readiness for a jurisdiction’s whole health care system. As defining readiness at the system level has proven to be challenging, an approach that provides a framework for planning and measuring health care readiness with broad utility is needed. The New York City Department of Health and Mental Hygiene (DOHMH) devised the Readiness Target Project. Nine areas or dimensions of readiness emerged from this work. Through focus groups and feedback from hospital stakeholders DOHMH developed a matrix of readiness areas outlining current state, target state, gaps, and recommendations to achieve readiness. The matrix is in use as a systematic approach to discover and close gaps in the readiness of the whole health care system and to provide that system a locally valid framework to drive continuous improvement. This paper describes a framework for planning and determining the status of health care readiness at the system level for the jurisdiction. (Disaster Med Public Health Preparedness. 2018;12:759-764))


Author(s):  
Katelynn Devinney ◽  
Adile Bekbay ◽  
Thomas Effland ◽  
Luis Gravano ◽  
David Howell ◽  
...  

ObjectiveTo incorporate data from Twitter into the New York City Department of Health and Mental Hygiene foodborne illness surveillance system and evaluate its utility and impact on foodborne illness complaint and outbreak detection.IntroductionAn estimated one in six Americans experience illness from the consumption of contaminated food (foodborne illness) annually; most are neither diagnosed nor reported to health departments1. Eating food prepared outside of the home is an established risk factor for foodborne illness2. New York City (NYC) has approximately 24,000 restaurants and >8.5 million residents, of whom 78% report eating food prepared outside of the home at least once per week3. Residents and visitors can report incidents of restaurant-associated foodborne illness to a citywide non-emergency information service, 311. In 2012, the NYC Department of Health and Mental Hygiene (DOHMH) began collaborating with Columbia University to improve the detection of restaurant-associated foodborne illness complaints using a machine learning algorithm and a daily feed of Yelp reviews to identify reports of foodborne illness4. Annually, DOHMH manages over 4,000 restaurant-associated foodborne illness reports received via 311 and identified on Yelp which lead to the detection of about 30 outbreaks associated with a restaurant in NYC. Given the small number of foodborne illness outbreaks identified, it is probable that many restaurant-associated foodborne illness incidents remain unreported. DOHMH sought to incorporate and evaluate an additional data source, Twitter, to enhance foodborne illness complaint and outbreak detection efforts in NYC.MethodsDOHMH epidemiologists continue to collaborate with computer scientists at Columbia University who developed a text mining algorithm that identifies tweets indicating foodborne illness. Twitter data are received via a targeted application program interface query that searches for foodborne illness key words and uses metadata to select for tweets with a possible NYC location. Each tweet is assigned a sick score between 0–1; those meeting a threshold value of 0.5 are manually reviewed by an epidemiologist, and a survey link is tweeted to users who have tweeted about foodborne illness, requesting more information regarding the date and time of the foodborne illness event, restaurant details, and user contact information. Survey data are used to validate complaints and are incorporated in a daily analysis using all sources of complaint data to identify restaurants with multiple foodborne illness complaints within a 30-day period. This system was launched on November 29, 2016.ResultsDuring November 29, 2016–September 27, 2017, 12,015 tweets qualified for review (39/day on average); 2,288 (19.0%) indicated foodborne illness in NYC, and 1,778 (14.8%) were tweeted a survey link (510 foodborne illness tweets were either deleted by the Twitter user or were tweets from a user who was already sent a survey for the same foodborne illness incident). The survey tweets resulted in 92 likes, 12 retweets, 65 replies, 232 profile views and 348 survey link clicks. Of the 1,778 surveys sent, 27 were completed (response rate 1.5%), of which 20 (74.7%) confirmed foodborne illness associated with a NYC restaurant; none had been reported via 311/Yelp. Of those, 11 (55%) provided a phone number, of which 10 (90.9%) completed phone interviews. The completed surveys contributed to the identification of two restaurants with multiple foodborne illness complaints within a 30-day period.ConclusionsThe utility of Twitter for foodborne illness outbreak detection continues to be evaluated. While the survey response rate has been low, the identification of new complaints not otherwise reported to 311 and Yelp suggests this will be a useful tool. Future plans include using feedback data collected by DOHMH epidemiologist review to increase the sensitivity and specificity of the text mining algorithm and improve the location detection for Twitter users. In addition, we plan to implement enhancements to the survey and create a web page to promote survey responses. Furthermore, we intend to share this system with other health departments so that they might incorporate Twitter in their outbreak detection and public health surveillance activities.References1. Scallan E, Griffin PM, Angulo FJ, Tauxe RV, Hoekstra RM. Foodborne illness acquired in the United States--unspecified agents. Emerg Infect Dis. 2011 Jan;17(1):16-22.2. Jones TF, Angulo FJ. Eating in restaurants: a risk factor for foodborne disease? Clin Infect Dis. 2006 Nov 15;43(10):1324-8.3. New York City Health and Nutrition Examination Survey, 2013-2014 [Internet]. New York: New York City Department of Health and Mental Hygiene and The City University of New York; 2017 [cited 2017 Aug 28]. Available from: http://nychanes.org/data/4. Harrison C, Jorder M, Stern H, Stavinsky F, Reddy V, Hanson H, Waechter H, Lowe L, Gravano L, Balter S; Centers for Disease Control and Prevention (CDC).. Using online reviews by restaurant patrons to identify unreported cases of foodborne illness - New York City, 2012-2013. MMWR Morb Mortal Wkly Rep. 2014 May 23;63(20):441-5.


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