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Nathaniel Osgood Person1 #679855 Nathaniel D. Osgood is a Professor in the Department of Computer Science and Associate Faculty in the Department of Community Health & Epidemiology at the University of Saskatchewan. | Research InterestsCombining Data Science, Systems Science, Computational Science and Applied Math to improve decision making in health and healthcare - Tools of choice include supplementing system science dynamic models (particularly Agent-Based models, System Dynamics, and discrete event simulation) with particle filtering and particle MCMC with such system science models, systems for visualizing state space reconstruction and for Convergent Cross Mapping (CCM), existing and novel machine learning and dynamic modeling toolsets, GPU-based computational statistics algorithms (PMCMC and Particle Filtering) and CM, and a growing amount of FPGA-based performance acceleration of key algorithms. Of late, I have a particularly strong focus on leveraging understanding from Applied Category Theory -- an area I find to offer compelling alignment with the systems science perspective, synergies with systems science techniques, the requisite power to deliver compelling insight, and an outstanding foundation for more powerful tools for study of complex systems. I am particularly committed to using Applied Category Theory as the basis for use of higher-level functional programming and metalinguistic abstraction to enhance the clarity, transparency, concision, modularity, flexibility and power of languages for characterizing dynamic models.
- All such tools are applied within the health sphere, as this is our elected point of focus, inspiration and dedication. We further make extensive investment in machine learning to sharpen and broaden the health surveillance, including using our Ethica epidemiological smartphone and wearable-based data collection system, time series of search volumes, time series of machine-learning-classifed Twitter messages, web-scraped data, and other mechanisms. For example, as part of our strategy of using twitter for health surveillance in Canada, we have amassed more than 200M tweets. The types of data we obtain through surveillance data are classified using machine learning tools (including more traditional tools through to deep learning) to flag tweets of relevance and inform our particle-filtered and PMCMC-regrounded models.
Tags: Nate Osgood, Mental health, Nathan Osgood |
+Citavimą (9) - CitavimąPridėti citatąList by: CiterankMapLink[2] Compositional modeling with stock and flow diagrams
Cituoja: John Baez, Xiaoyan Li, Sophie Libkind, Nathaniel Osgood, Evan Patterson Publication date: 31 July 2023 Publication info: arXiv:2205.08373 [cs.LO] Cituojamas: David Price 9:16 PM 14 November 2023 GMT Citerank: (1) 715301AlgebraicJuliaAlgebraicJulia aims to create novel approaches to scientific computing based on applied category theory, and constitutes an ecosystem of software based on generalized algebra and category theory in Julia.122C78CB7 URL: DOI: https://doi.org/10.48550/arXiv.2205.08373
| Ištrauka - [arXiv, 31 July 2023]
Stock and flow diagrams are widely used in epidemiology to model the dynamics of populations. Although tools already exist for building these diagrams and simulating the systems they describe, we have created a new package called StockFlow, part of the AlgebraicJulia ecosystem, which uses ideas from category theory to overcome notable limitations of existing software. Compositionality is provided by the theory of decorated cospans: stock and flow diagrams can be composed to form larger ones in an intuitive way formalized by the operad of undirected wiring diagrams. Our approach also cleanly separates the syntax of stock and flow diagrams from the semantics they can be assigned. We consider semantics in ordinary differential equations, although others are possible. As an example, we explain code in StockFlow that implements a simplified version of a COVID-19 model used in Canada. |
Link[3] Impacts of observation frequency on proximity contact data and modeled transmission dynamics
Cituoja: Weicheng Qian, Kevin Gordon Stanley, Nathaniel David Osgood Publication date: 27 February 2023 Publication info: PLOS Computational Biology, 19(2), e1010917–e1010917. Cituojamas: David Price 0:14 AM 30 November 2023 GMT Citerank: (2) 701037MfPH – Publications144B5ACA0, 715294Contact tracing859FDEF6 URL: DOI: https://doi.org/10.1371/journal.pcbi.1010917
| Ištrauka - [PLOS Computational Biology, 27 February 2023]
Transmission of many communicable diseases depends on proximity contacts among humans. Modeling the dynamics of proximity contacts can help determine whether an outbreak is likely to trigger an epidemic. While the advent of commodity mobile devices has eased the collection of proximity contact data, battery capacity and associated costs impose tradeoffs between the observation frequency and scanning duration used for contact detection. The choice of observation frequency should depend on the characteristics of a particular pathogen and accompanying disease. We downsampled data from five contact network studies, each measuring participant-participant contact every 5 minutes for durations of four or more weeks. These studies included a total of 284 participants and exhibited different community structures. We found that for epidemiological models employing high-resolution proximity data, both the observation method and observation frequency configured to collect proximity data impact the simulation results. This impact is subject to the population’s characteristics as well as pathogen infectiousness. By comparing the performance of two observation methods, we found that in most cases, half-hourly Bluetooth discovery for one minute can collect proximity data that allows agent-based transmission models to produce a reasonable estimation of the attack rate, but more frequent Bluetooth discovery is preferred to model individual infection risks or for highly transmissible pathogens. Our findings inform the empirical basis for guidelines to inform data collection that is both efficient and effective. |
Link[4] Participatory Modeling with Discrete-Event Simulation: A Hybrid Approach to Inform Policy Development to Reduce Emergency Department Wait Times
Cituoja: Yuan Tian, Jenny Basran, James Stempien, Adrienne Danyliw, Graham Fast, Patrick Falastein, Nathaniel D. Osgood Publication date: 17 July 2023 Publication info: Systems 2023, 11(7), 362; Cituojamas: David Price 2:36 PM 2 December 2023 GMT Citerank: (2) 685420Hospitals16289D5D4, 701037MfPH – Publications144B5ACA0 URL: DOI: https://doi.org/10.3390/systems11070362
| Ištrauka - [Systems, 17 July 2023]
We detail a case study using a participatory modeling approach in the development and use of discrete-event simulations to identify intervention strategies aimed at reducing emergency department (ED) wait times in a Canadian health policy setting. A four-stage participatory modeling approach specifically adapted to the local policy environment was developed to engage stakeholders throughout the modeling processes. The participatory approach enabled a provincial team to engage a broad range of stakeholders to examine and identify the causes and solutions to lengthy ED wait times in the studied hospitals from a whole-system perspective. Each stage of the approach was demonstrated through its application in the case study. A novel and key feature of the participatory modeling approach was the development and use of a multi-criteria framework to identify and prioritize interventions to reduce ED wait times. We conclude with a discussion on lessons learned, which provide insights into future development and applications of participatory modeling methods to facilitate policy development and build multi-stakeholder consensus. |
Link[5] Comparison of pretrained transformer-based models for influenza and COVID-19 detection using social media text data in Saskatchewan, Canada
Cituoja: Yuan Tian, Wenjing Zhang, Lujie Duan, Wade McDonald, Nathaniel Osgood Publication date: 28 June 2023 Publication info: Front. Digit. Health, 28 June 2023, Volume 5 - 2023 Cituojamas: David Price 4:38 PM 4 December 2023 GMT Citerank: (6) 701020CANMOD – PublicationsPublications by CANMOD Members144B5ACA0, 701037MfPH – Publications144B5ACA0, 703953Machine learning859FDEF6, 703974Influenza859FDEF6, 704045Covid-19859FDEF6, 715666Social networks859FDEF6 URL: DOI: https://doi.org/10.3389/fdgth.2023.1203874
| Ištrauka - [Frontiers in Digital Health, 28 June 2023]
Background: The use of social media data provides an opportunity to complement traditional influenza and COVID-19 surveillance methods for the detection and control of outbreaks and informing public health interventions.
Objective: The first aim of this study is to investigate the degree to which Twitter users disclose health experiences related to influenza and COVID-19 that could be indicative of recent plausible influenza cases or symptomatic COVID-19 infections. Second, we seek to use the Twitter datasets to train and evaluate the classification performance of Bidirectional Encoder Representations from Transformers (BERT) and variant language models in the context of influenza and COVID-19 infection detection.
Methods: We constructed two Twitter datasets using a keyword-based filtering approach on English-language tweets collected from December 2016 to December 2022 in Saskatchewan, Canada. The influenza-related dataset comprised tweets filtered with influenza-related keywords from December 13, 2016, to March 17, 2018, while the COVID-19 dataset comprised tweets filtered with COVID-19 symptom-related keywords from January 1, 2020, to June 22, 2021. The Twitter datasets were cleaned, and each tweet was annotated by at least two annotators as to whether it suggested recent plausible influenza cases or symptomatic COVID-19 cases. We then assessed the classification performance of pre-trained transformer-based language models, including BERT-base, BERT-large, RoBERTa-base, RoBERT-large, BERTweet-base, BERTweet-covid-base, BERTweet-large, and COVID-Twitter-BERT (CT-BERT) models, on each dataset. To address the notable class imbalance, we experimented with both oversampling and undersampling methods.
Results: The influenza dataset had 1129 out of 6444 (17.5%) tweets annotated as suggesting recent plausible influenza cases. The COVID-19 dataset had 924 out of 11939 (7.7%) tweets annotated as inferring recent plausible COVID-19 cases. When compared against other language models on the COVID-19 dataset, CT-BERT performed the best, supporting the highest scores for recall (94.8%), F1(94.4%), and accuracy (94.6%). For the influenza dataset, BERTweet models exhibited better performance. Our results also showed that applying data balancing techniques such as oversampling or undersampling method did not lead to improved model performance.
Conclusions: Utilizing domain-specific language models for monitoring users’ health experiences related to influenza and COVID-19 on social media shows improved classification performance and has the potential to supplement real-time disease surveillance. |
Link[6] Using simulation modelling and systems science to help contain COVID‐19: A systematic review
Cituoja: Weiwei Zhang, Shiyong Liu, Nathaniel Osgood, Hongli Zhu, Ying Qian, Peng Jia Publication date: 19 August 2022 Publication info: Systems Research and Behavioral ScienceVolume 40, Issue 1 p. 207-234 Cituojamas: David Price 9:55 PM 6 December 2023 GMT Citerank: (3) 701037MfPH – Publications144B5ACA0, 704045Covid-19859FDEF6, 708812Simulation859FDEF6 URL: DOI: https://doi.org/10.1002/sres.2897
| Ištrauka - [Systems Research and Behavioral Science, 19 August 2022]
This study systematically reviews applications of three simulation approaches, that is, system dynamics model (SDM), agent-based model (ABM) and discrete event simulation (DES), and their hybrids in COVID-19 research and identifies theoretical and application innovations in public health. Among the 372 eligible papers, 72 focused on COVID-19 transmission dynamics, 204 evaluated both pharmaceutical and non-pharmaceutical interventions, 29 focused on the prediction of the pandemic and 67 investigated the impacts of COVID-19. ABM was used in 275 papers, followed by 54 SDM papers, 32 DES papers and 11 hybrid model papers. Evaluation and design of intervention scenarios are the most widely addressed area accounting for 55% of the four main categories, that is, the transmission of COVID-19, prediction of the pandemic, evaluation and design of intervention scenarios and societal impact assessment. The complexities in impact evaluation and intervention design demand hybrid simulation models that can simultaneously capture micro and macro aspects of the socio-economic systems involved. |
Link[7] Using a hybrid simulation model to assess the impacts of combined COVID-19 containment measures in a high-speed train station
Cituoja: Hongli Zhu, Shiyong Liu, Xiaoyan Li, Weiwei Zhang, Nathaniel Osgood, Peng Jia Publication date: 20 March 2023 Publication info: Journal of Simulation, 20 March 2023 Cituojamas: David Price 10:59 PM 7 December 2023 GMT Citerank: (5) 701020CANMOD – PublicationsPublications by CANMOD Members144B5ACA0, 701037MfPH – Publications144B5ACA0, 703963Mobility859FDEF6, 704045Covid-19859FDEF6, 708812Simulation859FDEF6 URL: DOI: https://doi.org/10.1080/17477778.2023.2189027
| Ištrauka - [Journal of Simulation, 20 March 2023]
In this study, we present a hybrid agent-based model (ABM) and discrete event simulation (DES) framework where ABM captures the spread dynamics of COVID-19 via asymptomatic passengers and DES captures the impacts of environmental variables, such as service process capacity, on the results of different containment measures in a typical high-speed train station in China. The containment and control measures simulated include as-is (nothing changed) passenger flow control, enforcing social distancing, adherence level in face mask-wearing, and adding capacity to current service stations. These measures are evaluated individually and then jointly under a different initial number of asymptomatic passengers. The results show how some measures can consolidate the outcomes for each other, while combinations of certain measures could compromise the outcomes for one or the other due to unbalanced service process configurations. The hybrid ABM and DES models offer a useful multi-function simulation tool to help inform decision/policy makers of intervention designs and implementations for addressing issues like public health emergencies and emergency evacuations. Challenges still exist for the hybrid model due to the limited availability of simulation platforms, extensive consumption of computing resources, and difficulties in validation and optimisation. |
Link[8] Qualitative Interviews to Add Patient Perspectives in Colorectal Cancer Screening: Improvements in a Learning Health System
Cituoja: Meghan M JaKa, Maren G Henderson, Samantha Alch, Jeanette Y Ziegenfuss, Andrew R Zinkel, Nathaniel D Osgood, Ann Werner, Caitlin M Borgert Spaniol, Matthew Flory, Patricia L Mabry Publication date: 3 November 2023 Publication info: Journal of Cancer Education, 3 November 2023 Cituojamas: David Price 5:10 PM 9 December 2023 GMT Citerank: (2) 701020CANMOD – PublicationsPublications by CANMOD Members144B5ACA0, 704015Cancer859FDEF6 URL: DOI: https://doi.org/10.1007/s13187-023-02378-6
| Ištrauka - [Journal of Cancer Education, 3 November 2023]
Health systems are interested in increasing colorectal cancer (CRC) screening rates as CRC is a leading cause of preventable cancer death. Learning health systems are ones that use data to continually improve care. Data can and should include qualitative local perspectives to improve patient and provider education and care. This study sought to understand local perspectives on CRC screening to inform future strategies to increase screening rates across our integrated health system. Health insurance plan members who were eligible for CRC screening were invited to participate in semi-structured phone interviews. Qualitative content analysis was conducted using an inductive approach. Forty member interviews were completed and analyzed. Identified barriers included ambivalence about screening options (e.g., “If it had the same performance, I’d rather do home fecal sample test. But I’m just too skeptical [so I do the colonoscopy].”), negative prior CRC screening experiences, and competing priorities. Identified facilitators included a positive general attitude towards health (e.g., “I’m a rule follower. There are certain things I’ll bend rules. But certain medical things, you just got to do.”), social support, a perceived risk of developing CRC, and positive prior CRC screening experiences. Study findings were used by the health system leaders to inform the selection of CRC screening outreach and education strategies to be tested in a future simulation model. For example, the identified barrier related to ambivalence about screening options led to a proposed revision of outreach materials that describe screening types more clearly. |
Link[9] Agent-Based Modeling and Its Trade-Offs: An Introduction and Examples
Cituoja: G. Wade McDonald, Nathaniel D. Osgood Publication date: 7 August 2023 Publication info: In: David, J., Wu, J. (eds) Mathematics of Public Health. Fields Institute Communications, vol 88. Springer, Cham. Cituojamas: David Price 0:14 AM 4 March 2024 GMT Citerank: (2) 701020CANMOD – PublicationsPublications by CANMOD Members144B5ACA0, 708813Agent-based models859FDEF6 URL: DOI: https://doi.org/10.1007/978-3-031-40805-2_9
| Ištrauka - [Mathematics of Public Health, 7 August 2023]
Agent-based modeling is a computational dynamic modeling technique that may be less familiar to some readers. Agent-based modeling seeks to understand the behavior of complex systems by situating agents in an environment and studying the emergent outcomes of agent-agent and agent-environment interactions. In comparison with compartmental models, agent-based models offer simpler, more scalable, and flexible representation of heterogeneity, the ability to capture dynamic and static network and spatial context, and the ability to consider history of individuals within the model. In contrast, compartmental models offer faster development time with less programming required, lower computational requirements that do not scale with population, and the option for concise mathematical formulation with ordinary, delay, or stochastic differential equations supporting derivation of properties of the system behavior. |
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