ANALYSIS OF THE EXAMINATION RESULTS OF PATIENTS WITH HYPERTENSION BASED ON CORRELATION INDICES AND DECISION TREE TO OPTIMIZE THE PROGNOSIS OF THE DISEASE AT THE PRIMARY LEVEL
The paper suggests an optimization method for the developing disease prognosis at the primary health care level. The hemodynamic indices in primary and re-examination as token inclusion to vulnerable groups of health deterioration and developing the progression in patients with hypertension have bee...
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Series: | Medična Informatika ta Inženerìâ |
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doaj-8a1702bf5b0747a6b801e49459869dbf2020-11-24T22:35:55ZengUkrmedknyha Publishing HouseMedična Informatika ta Inženerìâ1996-19601997-74682015-09-010210.11603/mie.1996-1960.2015.2.49154440ANALYSIS OF THE EXAMINATION RESULTS OF PATIENTS WITH HYPERTENSION BASED ON CORRELATION INDICES AND DECISION TREE TO OPTIMIZE THE PROGNOSIS OF THE DISEASE AT THE PRIMARY LEVELP. R. Selskyy0ДВНЗ «Тернопільський державний медичний університет імені І. Я. Горбачевського МОЗ України»The paper suggests an optimization method for the developing disease prognosis at the primary health care level. The hemodynamic indices in primary and re-examination as token inclusion to vulnerable groups of health deterioration and developing the progression in patients with hypertension have been investigated. Approach is based on calculation of correlation coefficients and decision tree.http://ojs.tdmu.edu.ua/index.php/here/article/view/4915 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
P. R. Selskyy |
spellingShingle |
P. R. Selskyy ANALYSIS OF THE EXAMINATION RESULTS OF PATIENTS WITH HYPERTENSION BASED ON CORRELATION INDICES AND DECISION TREE TO OPTIMIZE THE PROGNOSIS OF THE DISEASE AT THE PRIMARY LEVEL Medična Informatika ta Inženerìâ |
author_facet |
P. R. Selskyy |
author_sort |
P. R. Selskyy |
title |
ANALYSIS OF THE EXAMINATION RESULTS OF PATIENTS WITH HYPERTENSION BASED ON CORRELATION INDICES AND DECISION TREE TO OPTIMIZE THE PROGNOSIS OF THE DISEASE AT THE PRIMARY LEVEL |
title_short |
ANALYSIS OF THE EXAMINATION RESULTS OF PATIENTS WITH HYPERTENSION BASED ON CORRELATION INDICES AND DECISION TREE TO OPTIMIZE THE PROGNOSIS OF THE DISEASE AT THE PRIMARY LEVEL |
title_full |
ANALYSIS OF THE EXAMINATION RESULTS OF PATIENTS WITH HYPERTENSION BASED ON CORRELATION INDICES AND DECISION TREE TO OPTIMIZE THE PROGNOSIS OF THE DISEASE AT THE PRIMARY LEVEL |
title_fullStr |
ANALYSIS OF THE EXAMINATION RESULTS OF PATIENTS WITH HYPERTENSION BASED ON CORRELATION INDICES AND DECISION TREE TO OPTIMIZE THE PROGNOSIS OF THE DISEASE AT THE PRIMARY LEVEL |
title_full_unstemmed |
ANALYSIS OF THE EXAMINATION RESULTS OF PATIENTS WITH HYPERTENSION BASED ON CORRELATION INDICES AND DECISION TREE TO OPTIMIZE THE PROGNOSIS OF THE DISEASE AT THE PRIMARY LEVEL |
title_sort |
analysis of the examination results of patients with hypertension based on correlation indices and decision tree to optimize the prognosis of the disease at the primary level |
publisher |
Ukrmedknyha Publishing House |
series |
Medična Informatika ta Inženerìâ |
issn |
1996-1960 1997-7468 |
publishDate |
2015-09-01 |
description |
The paper suggests an optimization method for the developing disease prognosis at the primary health care level. The hemodynamic indices in primary and re-examination as token inclusion to vulnerable groups of health deterioration and developing the progression in patients with hypertension have been investigated. Approach is based on calculation of correlation coefficients and decision tree. |
url |
http://ojs.tdmu.edu.ua/index.php/here/article/view/4915 |
work_keys_str_mv |
AT prselskyy analysisoftheexaminationresultsofpatientswithhypertensionbasedoncorrelationindicesanddecisiontreetooptimizetheprognosisofthediseaseattheprimarylevel |
_version_ |
1725722231104864256 |