scispace - formally typeset
Search or ask a question
Author

Rakhee Palekar

Bio: Rakhee Palekar is an academic researcher from Pan American Health Organization. The author has contributed to research in topics: Influenza A virus & Mortality rate. The author has an hindex of 17, co-authored 31 publications receiving 2050 citations. Previous affiliations of Rakhee Palekar include Centers for Disease Control and Prevention & National Center for Immunization and Respiratory Diseases.

Papers
More filters
Journal ArticleDOI
A. Danielle Iuliano1, Katherine Roguski1, Howard H. Chang2, David Muscatello3, Rakhee Palekar4, Stefano Tempia1, Cheryl Cohen5, Jon Michael Gran6, Jon Michael Gran7, Dena L. Schanzer, Benjamin J. Cowling8, Peng Wu8, Jan Kynčl, Li Wei Ang9, Minah Park8, Monika Redlberger-Fritz10, Hongjie Yu11, Laura Espenhain12, Anand Krishnan13, Gideon O. Emukule1, Liselotte van Asten, Susana Silva, Suchunya Aungkulanon14, Udo Buchholz15, Marc-Alain Widdowson1, Joseph S. Bresee1, Eduardo Azziz-Baumgartner, Po-Yung Cheng, Fatimah S. Dawood, Ivo M. Foppa, Sonja J. Olsen, Michael Haber, Caprichia Jeffers, C. Raina MacIntyre, Anthony T. Newall, James G. Wood, Michael Kundi, Therese Popow-Kraupp, Makhdum Ahmed, Mahmudur Rahman, Fatima Marinho, C Viviana Sotomayor Proschle, Natalia Vergara Mallegas, Feng Luzhao, Li Sa, Juliana Barbosa-Ramírez, Diana Malo Sanchez, Leandra Abarca Gomez, Xiomara Badilla Vargas, aBetsy Acosta Herrera, María Josefa Llanés, Thea Kølsen Fischer, Tyra Grove Krause, Kåre Mølbak, Jens Nielsen, Ramona Trebbien, Alfredo Bruno, Jenny Ojeda, Hector Ramos, Matthias an der Heiden, Leticia del Carmen Castillo Signor, Carlos Enrique Serrano, Rohit Bhardwaj, Mandeep S. Chadha, Venkatesh Vinayak Narayan, Soewarta Kosen, Michal Bromberg, Aharona Glatman-Freedman, Zalman Kaufman, Yuzo Arima, Kazunori Oishi, Sandra S. Chaves, Bryan O. Nyawanda, Reem Abdullah Al-Jarallah, Pablo A Kuri-Morales, Cuitláhuac Ruiz Matus, Maria Eugenia Jimenez Corona, Alexander Burmaa, Oyungerel Darmaa, Majdouline Obtel, Imad Cherkaoui, Cees C van den Wijngaard, Wim van der Hoek, Michael G Baker, Don Bandaranayake, Ange Bissielo, Sue Huang, Liza Lopez, Claire Newbern, Elmira Flem, Gry M Grøneng, Siri Hauge, Federico G de Cosío, Yadira De Molto, Lourdes Moreno Castillo, María Agueda Cabello, Marta Von Horoch, José L. Medina Osis, Ausenda Machado, Baltazar Nunes, Ana Paula Rodrigues, Emanuel Rodrigues, Cristian Calomfirescu, Emilia Lupulescu, Rodica Popescu, Odette Popovici, Dragan Bogdanovic, Marina Kostic, Konstansa Lazarevic, Zoran Milosevic, Branislav Tiodorovic, Mark I-Cheng Chen, Jeffery Cutter, Vernon J. Lee, Raymond T. P. Lin, Stefan Ma, Adam L. Cohen, Florette K. Treurnicht, Woo Joo Kim, Concha Delgado-Sanz, Salvador de mateo Ontañón, Amparo Larrauri, Inmaculada León, Fernando Vallejo, Rita Born, Christoph Junker, Daniel Koch, Jen-Hsiang Chuang, Wan-Ting Huang, Hung-Wei Kuo, Yi-Chen Tsai, Kanitta Bundhamcharoen, Malinee Chittaganpitch, Helen K. Green, Richard Pebody, Natalia Goñi, Hector Chiparelli, Lynnette Brammer, Desiree Mustaquim 
TL;DR: These global influenza-associated respiratory mortality estimates are higher than previously reported, suggesting that previous estimates might have underestimated disease burden.

1,658 citations

Journal ArticleDOI
TL;DR: The extent to which clearly defined social networks affect influenza transmission is shown, revealing strong between-place interactions with back-and-forth waves of transmission between the school, the community, and the household.
Abstract: Evaluating the impact of different social networks on the spread of respiratory diseases has been limited by a lack of detailed data on transmission outside the household setting as well as appropriate statistical methods. Here, from data collected during a H1N1 pandemic (pdm) influenza outbreak that started in an elementary school and spread in a semirural community in Pennsylvania, we quantify how transmission of influenza is affected by social networks. We set up a transmission model for which parameters are estimated from the data via Markov chain Monte Carlo sampling. Sitting next to a case or being the playmate of a case did not significantly increase the risk of infection; but the structuring of the school into classes and grades strongly affected spread. There was evidence that boys were more likely to transmit influenza to other boys than to girls (and vice versa), which mimicked the observed assortative mixing among playmates. We also investigated the presence of abnormally high transmission occurring on specific days of the outbreak. Late closure of the school (i.e., when 27% of students already had symptoms) had no significant impact on spread. School-aged individuals (6–18 y) facilitated the introduction and spread of influenza in households, but only about one in five cases aged >18 y was infected by a school-aged household member. This analysis shows the extent to which clearly defined social networks affect influenza transmission, revealing strong between-place interactions with back-and-forth waves of transmission between the school, the community, and the household.

367 citations

Journal ArticleDOI
TL;DR: Despite the challenge still posed in the clinical separation of influenza from other respiratory infections, the global use of the new WHO case definitions should help determine global trends in the characteristics and transmission of influenza viruses and the associated disease burden.
Abstract: The formulation of accurate clinical case definitions is an integral part of an effective process of public health surveillance. Although such definitions should, ideally, be based on a standardized and fixed collection of defining criteria, they often require revision to reflect new knowledge of the condition involved and improvements in diagnostic testing. Optimal case definitions also need to have a balance of sensitivity and specificity that reflects their intended use. After the 2009-2010 H1N1 influenza pandemic, the World Health Organization (WHO) initiated a technical consultation on global influenza surveillance. This prompted improvements in the sensitivity and specificity of the case definition for influenza - i.e. a respiratory disease that lacks uniquely defining symptomology. The revision process not only modified the definition of influenza-like illness, to include a simplified list of the criteria shown to be most predictive of influenza infection, but also clarified the language used for the definition, to enhance interpretability. To capture severe cases of influenza that required hospitalization, a new case definition was also developed for severe acute respiratory infection in all age groups. The new definitions have been found to capture more cases without compromising specificity. Despite the challenge still posed in the clinical separation of influenza from other respiratory infections, the global use of the new WHO case definitions should help determine global trends in the characteristics and transmission of influenza viruses and the associated disease burden.

181 citations

Journal ArticleDOI
12 Sep 2019-PLOS ONE
TL;DR: The epidemiological characteristics, pattern of circulation, and geographical distribution of influenza B viruses and its lineages using data from the Global Influenza B Study will help inform health policy decisions aiming to reduce disease burden associated with seasonal influenza.
Abstract: We describe the epidemiological characteristics, pattern of circulation, and geographical distribution of influenza B viruses and its lineages using data from the Global Influenza B Study. We included over 1.8 million influenza cases occurred in thirty-one countries during 2000–2018. We calculated the proportion of cases caused by influenza B and its lineages; determined the timing of influenza A and B epidemics; compared the age distribution of B/Victoria and B/Yamagata cases; and evaluated the frequency of lineage-level mismatch for the trivalent vaccine. The median proportion of influenza cases caused by influenza B virus was 23.4%, with a tendency (borderline statistical significance, p = 0.060) to be higher in tropical vs. temperate countries. Influenza B was the dominant virus type in about one every seven seasons. In temperate countries, influenza B epidemics occurred on average three weeks later than influenza A epidemics; no consistent pattern emerged in the tropics. The two B lineages caused a comparable proportion of influenza B cases globally, however the B/Yamagata was more frequent in temperate countries, and the B/Victoria in the tropics (p = 0.048). B/Yamagata patients were significantly older than B/Victoria patients in almost all countries. A lineage-level vaccine mismatch was observed in over 40% of seasons in temperate countries and in 30% of seasons in the tropics. The type B virus caused a substantial proportion of influenza infections globally in the 21st century, and its two virus lineages differed in terms of age and geographical distribution of patients. These findings will help inform health policy decisions aiming to reduce disease burden associated with seasonal influenza.

84 citations


Cited by
More filters
01 Jan 2016
TL;DR: The modern applied statistics with s is universally compatible with any devices to read, and is available in the digital library an online access to it is set as public so you can download it instantly.
Abstract: Thank you very much for downloading modern applied statistics with s. As you may know, people have search hundreds times for their favorite readings like this modern applied statistics with s, but end up in harmful downloads. Rather than reading a good book with a cup of coffee in the afternoon, instead they cope with some harmful virus inside their laptop. modern applied statistics with s is available in our digital library an online access to it is set as public so you can download it instantly. Our digital library saves in multiple countries, allowing you to get the most less latency time to download any of our books like this one. Kindly say, the modern applied statistics with s is universally compatible with any devices to read.

5,249 citations

Journal ArticleDOI
Gregory A. Roth1, Gregory A. Roth2, Degu Abate3, Kalkidan Hassen Abate4  +1025 moreInstitutions (333)
TL;DR: Non-communicable diseases comprised the greatest fraction of deaths, contributing to 73·4% (95% uncertainty interval [UI] 72·5–74·1) of total deaths in 2017, while communicable, maternal, neonatal, and nutritional causes accounted for 18·6% (17·9–19·6), and injuries 8·0% (7·7–8·2).

5,211 citations

Journal ArticleDOI
22 May 2020-BMJ
TL;DR: In study participants, mortality was high, independent risk factors were increasing age, male sex, and chronic comorbidity, including obesity, and the importance of pandemic preparedness and the need to maintain readiness to launch research studies in response to outbreaks is shown.
Abstract: Objective To characterise the clinical features of patients admitted to hospital with coronavirus disease 2019 (covid-19) in the United Kingdom during the growth phase of the first wave of this outbreak who were enrolled in the International Severe Acute Respiratory and emerging Infections Consortium (ISARIC) World Health Organization (WHO) Clinical Characterisation Protocol UK (CCP-UK) study, and to explore risk factors associated with mortality in hospital. Design Prospective observational cohort study with rapid data gathering and near real time analysis. Setting 208 acute care hospitals in England, Wales, and Scotland between 6 February and 19 April 2020. A case report form developed by ISARIC and WHO was used to collect clinical data. A minimal follow-up time of two weeks (to 3 May 2020) allowed most patients to complete their hospital admission. Participants 20 133 hospital inpatients with covid-19. Main outcome measures Admission to critical care (high dependency unit or intensive care unit) and mortality in hospital. Results The median age of patients admitted to hospital with covid-19, or with a diagnosis of covid-19 made in hospital, was 73 years (interquartile range 58-82, range 0-104). More men were admitted than women (men 60%, n=12 068; women 40%, n=8065). The median duration of symptoms before admission was 4 days (interquartile range 1-8). The commonest comorbidities were chronic cardiac disease (31%, 5469/17 702), uncomplicated diabetes (21%, 3650/17 599), non-asthmatic chronic pulmonary disease (18%, 3128/17 634), and chronic kidney disease (16%, 2830/17 506); 23% (4161/18 525) had no reported major comorbidity. Overall, 41% (8199/20 133) of patients were discharged alive, 26% (5165/20 133) died, and 34% (6769/20 133) continued to receive care at the reporting date. 17% (3001/18 183) required admission to high dependency or intensive care units; of these, 28% (826/3001) were discharged alive, 32% (958/3001) died, and 41% (1217/3001) continued to receive care at the reporting date. Of those receiving mechanical ventilation, 17% (276/1658) were discharged alive, 37% (618/1658) died, and 46% (764/1658) remained in hospital. Increasing age, male sex, and comorbidities including chronic cardiac disease, non-asthmatic chronic pulmonary disease, chronic kidney disease, liver disease and obesity were associated with higher mortality in hospital. Conclusions ISARIC WHO CCP-UK is a large prospective cohort study of patients in hospital with covid-19. The study continues to enrol at the time of this report. In study participants, mortality was high, independent risk factors were increasing age, male sex, and chronic comorbidity, including obesity. This study has shown the importance of pandemic preparedness and the need to maintain readiness to launch research studies in response to outbreaks. Study registration ISRCTN66726260.

2,459 citations

Journal ArticleDOI
A. Danielle Iuliano1, Katherine Roguski1, Howard H. Chang2, David Muscatello3, Rakhee Palekar4, Stefano Tempia1, Cheryl Cohen5, Jon Michael Gran6, Jon Michael Gran7, Dena L. Schanzer, Benjamin J. Cowling8, Peng Wu8, Jan Kynčl, Li Wei Ang9, Minah Park8, Monika Redlberger-Fritz10, Hongjie Yu11, Laura Espenhain12, Anand Krishnan13, Gideon O. Emukule1, Liselotte van Asten, Susana Silva, Suchunya Aungkulanon14, Udo Buchholz15, Marc-Alain Widdowson1, Joseph S. Bresee1, Eduardo Azziz-Baumgartner, Po-Yung Cheng, Fatimah S. Dawood, Ivo M. Foppa, Sonja J. Olsen, Michael Haber, Caprichia Jeffers, C. Raina MacIntyre, Anthony T. Newall, James G. Wood, Michael Kundi, Therese Popow-Kraupp, Makhdum Ahmed, Mahmudur Rahman, Fatima Marinho, C Viviana Sotomayor Proschle, Natalia Vergara Mallegas, Feng Luzhao, Li Sa, Juliana Barbosa-Ramírez, Diana Malo Sanchez, Leandra Abarca Gomez, Xiomara Badilla Vargas, aBetsy Acosta Herrera, María Josefa Llanés, Thea Kølsen Fischer, Tyra Grove Krause, Kåre Mølbak, Jens Nielsen, Ramona Trebbien, Alfredo Bruno, Jenny Ojeda, Hector Ramos, Matthias an der Heiden, Leticia del Carmen Castillo Signor, Carlos Enrique Serrano, Rohit Bhardwaj, Mandeep S. Chadha, Venkatesh Vinayak Narayan, Soewarta Kosen, Michal Bromberg, Aharona Glatman-Freedman, Zalman Kaufman, Yuzo Arima, Kazunori Oishi, Sandra S. Chaves, Bryan O. Nyawanda, Reem Abdullah Al-Jarallah, Pablo A Kuri-Morales, Cuitláhuac Ruiz Matus, Maria Eugenia Jimenez Corona, Alexander Burmaa, Oyungerel Darmaa, Majdouline Obtel, Imad Cherkaoui, Cees C van den Wijngaard, Wim van der Hoek, Michael G Baker, Don Bandaranayake, Ange Bissielo, Sue Huang, Liza Lopez, Claire Newbern, Elmira Flem, Gry M Grøneng, Siri Hauge, Federico G de Cosío, Yadira De Molto, Lourdes Moreno Castillo, María Agueda Cabello, Marta Von Horoch, José L. Medina Osis, Ausenda Machado, Baltazar Nunes, Ana Paula Rodrigues, Emanuel Rodrigues, Cristian Calomfirescu, Emilia Lupulescu, Rodica Popescu, Odette Popovici, Dragan Bogdanovic, Marina Kostic, Konstansa Lazarevic, Zoran Milosevic, Branislav Tiodorovic, Mark I-Cheng Chen, Jeffery Cutter, Vernon J. Lee, Raymond T. P. Lin, Stefan Ma, Adam L. Cohen, Florette K. Treurnicht, Woo Joo Kim, Concha Delgado-Sanz, Salvador de mateo Ontañón, Amparo Larrauri, Inmaculada León, Fernando Vallejo, Rita Born, Christoph Junker, Daniel Koch, Jen-Hsiang Chuang, Wan-Ting Huang, Hung-Wei Kuo, Yi-Chen Tsai, Kanitta Bundhamcharoen, Malinee Chittaganpitch, Helen K. Green, Richard Pebody, Natalia Goñi, Hector Chiparelli, Lynnette Brammer, Desiree Mustaquim 
TL;DR: These global influenza-associated respiratory mortality estimates are higher than previously reported, suggesting that previous estimates might have underestimated disease burden.

1,658 citations

Journal ArticleDOI
TL;DR: This tool produces novel, statistically robust analytical estimates of R that incorporates uncertainty in the distribution of the serial interval and should help epidemiologists quantify temporal changes in the transmission intensity of future epidemics by using surveillance data.
Abstract: The quantification of transmissibility during epidemics is essential to designing and adjusting public health responses. Transmissibility can be measured by the reproduction number R, the average number of secondary cases caused by an infected individual. Several methods have been proposed to estimate R over the course of an epidemic; however, they are usually difficult to implement for people without a strong background in statistical modeling. Here, we present a ready-to-use tool for estimating R from incidence time series, which is implemented in popular software including Microsoft Excel (Microsoft Corporation, Redmond, Washington). This tool produces novel, statistically robust analytical estimates of R and incorporates uncertainty in the distribution of the serial interval (the time between the onset of symptoms in a primary case and the onset of symptoms in secondary cases). We applied the method to 5 historical outbreaks; the resulting estimates of R are consistent with those presented in the literature. This tool should help epidemiologists quantify temporal changes in the transmission intensity of future epidemics by using surveillance data.

1,204 citations