| Literature DB >> 24283349 |
Dipankar Sengupta1, Pradeep K Naik.
Abstract
BACKGROUND: EHR (Electronic Health Record) system has led to development of specialized form of clinical databases which enable storage of information in temporal prospective. It has been a big challenge for mining this form of clinical data considering varied temporal points. This study proposes a conjoined solution to analyze the clinical parameters akin to a disease. We have used "association rule mining algorithm" to discover association rules among clinical parameters that can be augmented with the disease. Furthermore, we have proposed a new algorithm, SN algorithm, to map clinical parameters along with a disease state at various temporal points. RESULT: SN algorithm is based on Jacobian approach, which augurs the state of a disease 'Sn' at a given temporal point 'Tn' by mapping the derivatives with the temporal point 'T0', whose state of disease 'S0' is known. The predictive ability of the proposed algorithm is evaluated in a temporal clinical data set of brain tumor patients. We have obtained a very high prediction accuracy of ~97% for a brain tumor state 'Sn' for any temporal point 'Tn'.Entities:
Year: 2013 PMID: 24283349 PMCID: PMC4177143 DOI: 10.1186/2043-9113-3-24
Source DB: PubMed Journal: J Clin Bioinforma ISSN: 2043-9113
Figure 1Area differential approach based on Jacobian transformation. (A - Temporal point 1; B - Temporal point 2).
Figure 2Flow diagram of SN algorithm.
Association rules mined for various diagnostic parameters that are associated with the occurrence of brain tumor in patients
| KFT_Creatinine = HIGH == > KFT_BUN = HIGH | 56.75 | 100 | 77.45 |
| KFT_Creatinine = HIGH == > STATE = 1 | 56.75 | 100 | 77.77 |
| KFT_BUN = HIGH == > STATE = 1 | 78.37 | 85.29 | 90.8 |
| KFT_Creatinine = HIGH, KFT_BUN = HIGH == > STATE = 1 | 56.75 | 100 | 79.77 |
| LFT_SGOT = HIGH == > STATE = 1 | 62.16 | 98.83 | 81.72 |
| LFT_SGOT = HIGH == > LFT_SGPT = HIGH, STATE = 1 | 62.16 | 95.83 | 85.71 |
| LFT_SGPT = HIGH == > STATE = 1 | 81.08 | 88.23 | 89.56 |
| Haemoglobin_content = NORMAL == > STATE = 1 | 59.45 | 100 | 81.64 |
Support%, confidence% and correlation% for various combinations of parameter sets are included.
Temporal points along with various selected clinical parameters corresponding to brain tumor
| P1, T1, c1, b1, s1, g1 | P2, T1, c’1, b’1, s’1, g’1 | … | P55, T1, c”1, b”1, s”1, g”1 |
| P1, T2, c1′, b1′, s1′, g1′ | P2, T2, c’2′, b′2′, s’2′, g’2′ | … | P55, T2, c”2′, b”2′, s”2′, g”2′ |
| P1, T3, c1″, b1″, s1″, g1″ | P2, T3, c’3″, b’3″, s’3″, g’3″ | … | P55, T3, c”3″, b”3″, s”3″, g”3″ |