Multi-modal Predictive Models of Diabetes Progression

被引:6
|
作者
Ramazi, Ramin [1 ]
Perndorfer, Christine [1 ]
Soriano, Emily [1 ]
Laurenceau, Jean-Philippe [1 ]
Beheshti, Rahmatollah [1 ]
机构
[1] Univ Delaware, Newark, DE 19716 USA
关键词
Type; 2; diabetes; Continuous glucose monitoring; Activity trackers; Wearable medical devices; Recurrent neural networks; TYPE-1;
D O I
10.1145/3307339.3342177
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
With the increasing availability of wearable devices, continuous monitoring of individuals' physiological and behavioral patterns has become significantly more accessible. Access to these continuous patterns about individuals' statuses offers an unprecedented opportunity for studying complex diseases and health conditions such as type 2 diabetes (T2D). T2D is a widely common chronic disease that its roots and progression patterns are not fully understood. Predicting the progression of T2D can inform timely and more effective interventions to prevent or manage the disease. In this study, we have used a dataset related to 63 patients with T2D that includes the data from two different types of wearable devices worn by the patients: continuous glucose monitoring (CGM) devices and activity trackers (ActiGraphs). Using this dataset, we created a model for predicting the levels of four major biomarkers related to T2D after a one-year period. We developed a wide and deep neural network and used the data from the demographic information, lab tests, and wearable sensors to create the model. The deep part of our method was developed based on the long short-term memory (LSTM) structure to process the time-series dataset collected by the wearables. In predicting the patterns of the four biomarkers, we have obtained a root mean square error of +/- 1.67% for HBA1c, +/- 6.22 mg/dl for HDL cholesterol, +/- 10.46 mg/dl for LDL cholesterol, and +/- 18.38 mg/dl for Triglyceride. Compared to existing models for studying T2D, our model offers a more comprehensive tool for combining a large variety of factors that contribute to the disease.
引用
收藏
页码:253 / 258
页数:6
相关论文
共 50 条
  • [1] ASSESSING STUDENT RETENTION AND PROGRESSION: A MULTI-MODAL APPROACH
    Ice, Phil
    LEVERAGING TECHNOLOGY FOR LEARNING, VOL II, 2012, : 170 - 176
  • [2] On the Adversarial Robustness of Multi-Modal Foundation Models
    Schlarmann, Christian
    Hein, Matthias
    arXiv, 2023,
  • [3] Initial description of multi-modal dynamic models
    Kárny, M
    Nedoma, P
    Nagy, I
    Valecková, M
    ARTIFICIAL NEURAL NETS AND GENETIC ALGORITHMS, 2001, : 398 - 401
  • [4] Multi-Modal Generative AI with Foundation Models
    Liu, Ziwei
    PROCEEDINGS OF THE 2ND WORKSHOP ON LARGE GENERATIVE MODELS MEET MULTIMODAL APPLICATIONS, LGM(CUBE)A 2024, 2024, : 4 - 4
  • [5] On the Adversarial Robustness of Multi-Modal Foundation Models
    Schlarmann, Christian
    Hein, Matthias
    2023 IEEE/CVF INTERNATIONAL CONFERENCE ON COMPUTER VISION WORKSHOPS, ICCVW, 2023, : 3679 - 3687
  • [6] Discriminative multi-modal deep generative models
    Du, Fang
    Zhang, Jiangshe
    Hu, Junying
    Fei, Rongrong
    KNOWLEDGE-BASED SYSTEMS, 2019, 173 : 74 - 82
  • [7] Multi-Modal Generative AI with Foundation Models
    Liu, Ziwei
    PROCEEDINGS OF THE 1ST WORKSHOP ON LARGE GENERATIVE MODELS MEET MULTIMODAL APPLICATIONS, LGM3A 2023, 2023, : 5 - 5
  • [8] Towards Flexible Multi-modal Document Models
    Inoue, Naoto
    Kikuchi, Kotaro
    Simo-Serra, Edgar
    Otani, Mayu
    Yamaguchi, Kota
    2023 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR), 2023, : 14287 - 14296
  • [9] Cross-modal generative models for multi-modal plastic sorting
    Neo, Edward R. K.
    Low, Jonathan S. C.
    Goodship, Vannessa
    Coles, Stuart R.
    Debattista, Kurt
    JOURNAL OF CLEANER PRODUCTION, 2023, 415
  • [10] Evaluating a multi-modal reasoning system in diabetes care
    Montani, S
    Bellazzi, R
    Portinale, L
    Stefanelli, M
    ADVANCES IN CASE-BASED REASONING, PROCEEDINGS, 2001, 1898 : 467 - 478