QUANTIFICATION OF HORMONE PULSATILITY VIA AN APPROXIMATE ENTROPY ALGORITHM
被引:257
作者:
PINCUS, SM
论文数: 0引用数: 0
h-index: 0
机构:
YALE UNIV, SCH MED, DEPT OBSTET & GYNECOL, NEW HAVEN, CT 06510 USAYALE UNIV, SCH MED, DEPT OBSTET & GYNECOL, NEW HAVEN, CT 06510 USA
PINCUS, SM
[1
]
KEEFE, DL
论文数: 0引用数: 0
h-index: 0
机构:
YALE UNIV, SCH MED, DEPT OBSTET & GYNECOL, NEW HAVEN, CT 06510 USAYALE UNIV, SCH MED, DEPT OBSTET & GYNECOL, NEW HAVEN, CT 06510 USA
KEEFE, DL
[1
]
机构:
[1] YALE UNIV, SCH MED, DEPT OBSTET & GYNECOL, NEW HAVEN, CT 06510 USA
来源:
AMERICAN JOURNAL OF PHYSIOLOGY
|
1992年
/
262卷
/
05期
关键词:
FORMULA;
REGULARITY;
ENDOCRINE SYSTEMS;
D O I:
10.1152/ajpendo.1992.262.5.E741
中图分类号:
Q4 [生理学];
学科分类号:
071003 ;
摘要:
Approximate entropy (ApEn) is a recently developed formula to quantify the amount of regularity in data. We examine the potential applicability of ApEn to clinical endocrinology to quantify pulsatility in hormone secretion data. We evaluate the role of ApEn as a complementary statistic to widely employed pulse-detection algorithms, represented herein by ULTRA, via the analysis of two different classes of models that generate episodic data. We conclude that ApEn is able to discern subtle system changes and to provide insights separate from those given by ULTRA. ApEn evaluates subordinate as well as peak behavior and often provides a direct measure of feedback between subsystems. ApEn generally can distinguish systems given 180 data points and an intra-assay coefficient of variation of 8%. This suggests ApEn as applicable to clinical hormone secretion data within the foreseeable future. Additionally, the models analyzed and extant clinical data are both consistent with episodic, not periodic, normative physiology.