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MINDS Seminar on Data Science | Wearable data science for personalized digital medicine

기간 : 2023-05-22 ~ 2023-05-22
시간 : 17:00 ~ 18:00
개최 장소 : Math Bldg.104&Online streaming (Zoom)
개요
MINDS Seminar on Data Science | Wearable data science for personalized digital medicine
분야Field
날짜Date 2023-05-22 ~ 2023-05-22 시간Time 17:00 ~ 18:00
장소Place Math Bldg.104&Online streaming (Zoom) 초청자Host
연사Speaker Dae Wook Kim 소속Affiliation University of Michigan
TOPIC MINDS Seminar on Data Science | Wearable data science for personalized digital medicine
소개 및 안내사항Content

Currently, millions of individuals use wearables such as the Apple Watch to track their physical activity, heart rate, and other physiological signals. This has generated an unprecedented amount of wearable data, presenting an opportunity for digital medicine to unlock the next level of precision medicine. However, this wearable data is often noisy, making it seem unusable without new mathematical techniques to extract key signals from it. In this talk, I will describe several techniques that we have developed for analyzing this noisy time-series data. These techniques include a new state space estimation method called the level-set Kalman filter, which can be used to estimate the phase of circadian rhythms. I will also discuss a Kalman filter-assisted autoencoder for anomaly detection in time-series data, and feature engineering based on persistent homology and mathematical modeling. I will demonstrate how these techniques can be applied to scoring sleep, detecting aberrant physiological changes related to diseases such as COVID-19, and predicting daily mood.

<online>

https://us06web.zoom.us/j/6888961076?pwd=ejYxN05jNmhUa25PU2JzSUJvQ1haQT09 

학회명Field MINDS Seminar on Data Science | Wearable data science for personalized digital medicine
날짜Date 2023-05-22 ~ 2023-05-22 시간Time 17:00 ~ 18:00
장소Place Math Bldg.104&Online streaming (Zoom) 초청자Host
소개 및 안내사항Content

Currently, millions of individuals use wearables such as the Apple Watch to track their physical activity, heart rate, and other physiological signals. This has generated an unprecedented amount of wearable data, presenting an opportunity for digital medicine to unlock the next level of precision medicine. However, this wearable data is often noisy, making it seem unusable without new mathematical techniques to extract key signals from it. In this talk, I will describe several techniques that we have developed for analyzing this noisy time-series data. These techniques include a new state space estimation method called the level-set Kalman filter, which can be used to estimate the phase of circadian rhythms. I will also discuss a Kalman filter-assisted autoencoder for anomaly detection in time-series data, and feature engineering based on persistent homology and mathematical modeling. I will demonstrate how these techniques can be applied to scoring sleep, detecting aberrant physiological changes related to diseases such as COVID-19, and predicting daily mood.

<online>

https://us06web.zoom.us/j/6888961076?pwd=ejYxN05jNmhUa25PU2JzSUJvQ1haQT09 

성명Field MINDS Seminar on Data Science | Wearable data science for personalized digital medicine
날짜Date 2023-05-22 ~ 2023-05-22 시간Time 17:00 ~ 18:00
소속Affiliation University of Michigan 초청자Host
소개 및 안내사항Content

Currently, millions of individuals use wearables such as the Apple Watch to track their physical activity, heart rate, and other physiological signals. This has generated an unprecedented amount of wearable data, presenting an opportunity for digital medicine to unlock the next level of precision medicine. However, this wearable data is often noisy, making it seem unusable without new mathematical techniques to extract key signals from it. In this talk, I will describe several techniques that we have developed for analyzing this noisy time-series data. These techniques include a new state space estimation method called the level-set Kalman filter, which can be used to estimate the phase of circadian rhythms. I will also discuss a Kalman filter-assisted autoencoder for anomaly detection in time-series data, and feature engineering based on persistent homology and mathematical modeling. I will demonstrate how these techniques can be applied to scoring sleep, detecting aberrant physiological changes related to diseases such as COVID-19, and predicting daily mood.

<online>

https://us06web.zoom.us/j/6888961076?pwd=ejYxN05jNmhUa25PU2JzSUJvQ1haQT09 

성명Field MINDS Seminar on Data Science | Wearable data science for personalized digital medicine
날짜Date 2023-05-22 ~ 2023-05-22 시간Time 17:00 ~ 18:00
호실Host 인원수Affiliation Dae Wook Kim
사용목적Affiliation 신청방식Host University of Michigan
소개 및 안내사항Content

Currently, millions of individuals use wearables such as the Apple Watch to track their physical activity, heart rate, and other physiological signals. This has generated an unprecedented amount of wearable data, presenting an opportunity for digital medicine to unlock the next level of precision medicine. However, this wearable data is often noisy, making it seem unusable without new mathematical techniques to extract key signals from it. In this talk, I will describe several techniques that we have developed for analyzing this noisy time-series data. These techniques include a new state space estimation method called the level-set Kalman filter, which can be used to estimate the phase of circadian rhythms. I will also discuss a Kalman filter-assisted autoencoder for anomaly detection in time-series data, and feature engineering based on persistent homology and mathematical modeling. I will demonstrate how these techniques can be applied to scoring sleep, detecting aberrant physiological changes related to diseases such as COVID-19, and predicting daily mood.

<online>

https://us06web.zoom.us/j/6888961076?pwd=ejYxN05jNmhUa25PU2JzSUJvQ1haQT09 

Admin Admin · 2023-05-17 11:27 · 조회 88
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