All events
- All dayEmployee Art ExhibitArt exhibit highlighting creative the creative talent of UConn Health Employees from across the organization.
- All dayMartha G. Trask and Jeff Ostergren on Display"Expressions in Multimedia" by Martha G. Trask "Secondary Effects" by Jeff Ostergren Join us for a reception Thursday, May 22, from 4 to 6 p.m. in the Celeste LeWitt Gallery. (north side of the food court)Martha G. Trask is an expressive mixed media artist who happens to work in our library.Jeff Ostergren infuses his paint with actual medications to tell stories about the intertwined histories of pharmaceuticals and color.
- All dayUConn Softball vs NCAA College World SeriesView UConn Softball's full schedule. (https://uconnhuskies.com/sports/softball/schedule)
- 6:00 AM2hNeurosurgery Thursday Residency Curriculum SeriesTwo CME credits are granted for these weekly educational series presented by varying faculty. Alternating weekly the Tumor Board invites will be sent directly from the Cancer Center for one CME credit. Virtual Event: https://uchc.WebEx.com/meet/Neurosurgery
- 9:00 AM1hSTEM Programs Virtual Information SessionScience, Technology, Engineering, and Mathematics (STEM) fields are essential to U.S. economic competitiveness and growth. STEM-designated programs drive innovation and advancement, widening career prospects and strengthening the world economy. Those studying STEM develop a valuable quantitative and analytical skill set, elevating one's candidacy for well-paying, high-tech jobs. As you think critically about your next steps in higher education, join the UConn School of Business to learn more about the three STEM-designated Specialized Master's programs: MS in Business Analytics & Project Management (BAPM), MS in Financial Risk Management (FRM) and MS in Financial Technology (FinTech). This session will provide you with key information about the benefits of a STEM-designation and give you the opportunity to interact with program administrative and career staff.
- 11:00 AM1hNo Neuroscience Seminar Series TodaySponsored by the Kim Family FundNo Neuroscience Seminar Series Today
- 11:15 AM1h 30mMemoir GroupWrite your memoirs to share in class. New members are welcome!
- 11:15 AM1h 30mMemoir GroupWrite your memoirs to share in class. New members are welcome!
- 11:30 AM1hDoctoral Dissertation Oral Defense of (Soumyashree Sahoo).Soumyashree Sahoo, a Ph.D. candidate in the Department of Computer Science and Engineering at the University of Connecticut, will present and defend her doctoral dissertation titled "Predicting Depression Treatment Outcomes Using Smartphone Data: An Exploration of Self-Ratings, Location, and Medication Data." Her research leverages mobile sensor data, self-reported surveys, and medication-related features to develop machine learning models that predict depression symptom improvement status in individuals during treatment.
- 11:30 AM1hDoctoral Dissertation Oral Defense of (Soumyashree Sahoo).Soumyashree Sahoo, a Ph.D. candidate in the Department of Computer Science and Engineering at the University of Connecticut, will present and defend her doctoral dissertation titled "Predicting Depression Treatment Outcomes Using Smartphone Data: An Exploration of Self-Ratings, Location, and Medication Data." Her research leverages mobile sensor data, self-reported surveys, and medication-related features to develop machine learning models that predict depression symptom improvement status in individuals during treatment.
- 11:30 AM1hDoctoral Dissertation Oral Defense, Soumyashree SahooAbstract: Depression is a prevalent mental health disorder, and identifying effective treatment early remains a key challenge. Traditional assessments rely on clinical questionnaires, which are costly, infrequent, and prone to biases. With the rise of smartphones, new opportunities have emerged to monitor mental health using active self-reports and passive sensor data. To address the shortcomings of traditional assessments, we explore the use of smartphone-collected data—specifically, self-reported daily mood and anxiety ratings, medication survey and passive location-based sensory data—to predict depression treatment outcomes. In the first part, we evaluated 5-point Likert-scale mood and anxiety self-ratings as alternatives to clinical questionnaires. These self-reports significantly correlate with clinical scores (QIDS), achieving an F1 score of 0.65 using machine learning models like SVM, XGBoost, and Random Forest, compared to 0.71 using clinical questionnaires. In the second part, we investigate the use of passively collected location data for predicting treatment outcomes. To address the heterogeneity between Android and iOS data collection, we apply a domain adaptation technique (Correlation Alignment - CORAL) to align data from both platforms, significantly improving prediction performance. Our results show that combining location features with baseline clinical scores yields an F1 score of up to 0.67—comparable to periodic self-reported questionnaires—highlighting location data as a promising predictor of depression treatment outcomes. In the third part, we examine whether smartphone data collected early in treatment, specifically during the initial 2–4 weeks, can reliably predict outcomes at the 12th week (the end of the treatment course). Early prediction of treatment outcomes is critical for enabling timely clinical decisions. This study integrates weekly medication surveys, daily mood and anxiety self-ratings, and location-based sensory data to predict depression treatment outcomes 8 to 10 weeks before treatment completion with help of deep learning models (GRU-D and BRITS). Our findings indicate that smartphone data collected in the early phases of treatment can achieve prediction accuracies comparable to weekly clinical questionnaires.
- 12:05 PM45mGroup Fitness Class – Summer 2025 - Small Group Turf Strength - Session 1 - Thursday 12:05-12:55pm June 5-26For the full class schedule, descriptions, and to register, please visit the UConn Recreation website (https://recreation.uconn.edu/group-fitness-schedule/).
- 4:00 PM1hCCAM Seminar Series - Dr. Daniel LoboCCAM Seminar Series Speaker: Dr. Daniel Lobo, Associate Professor, Biological Sciences, University of Maryland Title: "Regulatory mechanisms of cell differentiation and body shape formation: from phenotypes to models" Abstract: Multicellular organisms develop tissues and body shapes through cell differentiation, proliferation, and migration. Understanding the regulatory mechanisms controlling spatial and dynamical patterns is a current challenge due to the complex feedback loops between molecular signals, mechanical forces, and the emergent cell types and tissue shapes they control. I will present our bioinformatics and systems biology approach, which integrates molecular assays, dynamic mathematical modeling, and de novo machine learning inference algorithms, to understand cell differentiation and body shape regulation. We demonstrated this methodology by understanding the whole-body regulation of planarian worm shapes, differentiation of human hematopoietic stem cells, and pattern formation of developmental synthetic biology systems. Location: Grossman Auditorium Via Webex: https://uchc.webex.com/uchc/j.php?MTID=mf22ff6a646a108fce2728863c3525d53 (https://urldefense.com/v3/__https:/uchc.webex.com/uchc/j.php?MTID=mf22ff6a646a108fce2728863c3525d53__;!!Cn_UX_p3!jBUDSpwbSN_rW_NLEPwhm91Y0XBLQU5WXfOfDkC0s_Ji81eVoYhcZaxabbLEwHaaFOOePOvRPWWqqG_ykxo$) Meeting number (access code): 2863 037 1820 Meeting password: CCAMseminars Guest Host: Dr. Michael Blinov