Exploring functional data analysis and wavelet principal component analysis on ecstasy (MDMA) wastewater data

被引:8
作者
Salvatore, Stefania [1 ]
Bramness, Jorgen G. [1 ]
Roislien, Jo [1 ,2 ]
机构
[1] Univ Oslo, Norwegian Ctr Addict Res, Oslo, Norway
[2] Inst Basic Med Sci, Oslo Ctr Biostat & Epidemiol, Oslo, Norway
关键词
Wastewater-based epidemiology; Stimulant drugs; Functional principal component analysis; Wavelet PCA; DRUG-USE; METHAMPHETAMINE; PREVALENCE;
D O I
10.1186/s12874-016-0179-2
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Background: Wastewater-based epidemiology (WBE) is a novel approach in drug use epidemiology which aims to monitor the extent of use of various drugs in a community. In this study, we investigate functional principal component analysis (FPCA) as a tool for analysing WBE data and compare it to traditional principal component analysis (PCA) and to wavelet principal component analysis (WPCA) which is more flexible temporally. Methods: We analysed temporal wastewater data from 42 European cities collected daily over one week in March 2013. The main temporal features of ecstasy (MDMA) were extracted using FPCA using both Fourier and B-spline basis functions with three different smoothing parameters, along with PCA and WPCA with different mother wavelets and shrinkage rules. The stability of FPCA was explored through bootstrapping and analysis of sensitivity to missing data. Results: The first three principal components (PCs), functional principal components (FPCs) and wavelet principal components (WPCs) explained 87.5-99.6 % of the temporal variation between cities, depending on the choice of basis and smoothing. The extracted temporal features from PCA, FPCA and WPCA were consistent. FPCA using Fourier basis and common-optimal smoothing was the most stable and least sensitive to missing data. Conclusion: FPCA is a flexible and analytically tractable method for analysing temporal changes in wastewater data, and is robust to missing data. WPCA did not reveal any rapid temporal changes in the data not captured by FPCA. Overall the results suggest FPCA with Fourier basis functions and common-optimal smoothing parameter as the most accurate approach when analysing WBE data.
引用
收藏
页数:12
相关论文
共 50 条
  • [21] Modeling and prediction of children’s growth data via functional principal component analysis
    Yu Hu
    XuMing He
    Jian Tao
    NingZhong Shi
    Science in China Series A: Mathematics, 2009, 52 : 1342 - 1350
  • [22] Modeling and prediction of children's growth data via functional principal component analysis
    Hu Yu
    He XuMing
    Tao Jian
    Shi NingZhong
    SCIENCE IN CHINA SERIES A-MATHEMATICS, 2009, 52 (06): : 1342 - 1350
  • [23] Feature extraction of auto insurance size of loss data using functional principal component analysis
    Xie, Shengkun
    EXPERT SYSTEMS WITH APPLICATIONS, 2022, 198
  • [24] Quantile residual lifetime regression with functional principal component analysis of longitudinal data for dynamic prediction
    Lin, Xiao
    Li, Ruosha
    Yan, Fangrong
    Lu, Tao
    Huang, Xuelin
    STATISTICAL METHODS IN MEDICAL RESEARCH, 2019, 28 (04) : 1216 - 1229
  • [25] Semiparametric mixture regression for asynchronous longitudinal data using multivariate functional principal component analysis
    Lu, Ruihan
    Li, Yehua
    Yao, Weixin
    BIOSTATISTICS, 2025, 26 (01)
  • [26] Uncertainty in functional principal component analysis
    Sharpe, James
    Fieller, Nick
    JOURNAL OF APPLIED STATISTICS, 2016, 43 (12) : 2295 - 2309
  • [27] Structured Functional Principal Component Analysis
    Shou, Haochang
    Zipunnikov, Vadim
    Crainiceanu, Ciprian M.
    Greven, Sonja
    BIOMETRICS, 2015, 71 (01) : 247 - 257
  • [28] Localized Functional Principal Component Analysis
    Chen, Kehui
    Lei, Jing
    JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION, 2015, 110 (511) : 1266 - 1275
  • [29] Independent component analysis for multivariate functional data
    Virta, Joni
    Li, Bing
    Nordhausen, Klaus
    Oja, Hannu
    JOURNAL OF MULTIVARIATE ANALYSIS, 2020, 176
  • [30] Functional principal subspace sampling for large scale functional data analysis
    He, Shiyuan
    Yan, Xiaomeng
    ELECTRONIC JOURNAL OF STATISTICS, 2022, 16 (01): : 2621 - 2682