Block bootstrap methods for the estimation of the intensity of a spatial point process with confidence bounds
Artikel i vetenskaplig tidskrift, 2013

This paper deals with the estimation of the intensity of a planar point process on the basis of a single point pattern, observed in a rectangular window. If the model assumptions of stationarity and isotropy hold, the method of block bootstrapping can be used to estimate the intensity of the process with confidence bounds. The results of two variants of block bootstrapping are compared with a parametric approximation based on the assumption of a Gaussian distribution of the numbers of points in deterministic subwindows of the original pattern. The studies were performed on patterns obtained by simulation of well-known point process models (Poisson process, two Matern cluster processes, Matern hardcore process, Strauss hardcore process). They were also performed on real histopathological data (point patterns of capillary profiles of 12 cases of prostatic cancer). The methods are presented as worked examples on two cases, where we illustrate their use as a check on stationarity (homogeneity) of a point process with respect to different fields of vision. The paper concludes with various methodological discussions and suggests possible extensions of the block bootstrap approach to other fields of spatial statistics.

dependent data

computer-intensive methods

statistical-analysis

pathology

Bootstrap

variance

intensity

capillaries

dependent data

sections

patterns

point process

sample reuse methods

Författare

T. Mattfeldt

Universität Ulm

Henrike Häbel

Chalmers, Matematiska vetenskaper, Matematisk statistik

Göteborgs universitet

SuMo Biomaterials

F. Fleischer

Boehringer Ingelheim

Journal of Microscopy

0022-2720 (ISSN) 1365-2818 (eISSN)

Vol. 251 1 84-98

Ämneskategorier

Annan teknik

Cell- och molekylärbiologi

Sannolikhetsteori och statistik

Styrkeområden

Livsvetenskaper och teknik (2010-2018)

DOI

10.1111/jmi.12048

Mer information

Senast uppdaterat

2020-08-18