| Literature DB >> 20339561 |
Abstract
A classification system to detect congestive heart failure (CHF) patients from normal (N) patients is described. The classification procedure uses the k-nearest neighbor algorithm and uses features from the second-order difference plot (SODP) obtained from Holter monitor cardiac RR intervals. The classification system which employs a statistical procedure to obtain the final result gave a success rate of 100% to distinguish CHF patients from normal patients. For this study the Holter monitor data of 36 normal and 36 CHF patients were used. The classification system using standard deviation of RR intervals also performed well, although it did not match the 100% success rate using the features from SODP. However, the success rate for classification using this procedure for SDRR was many fold higher compared to using a threshold. The classification system in this paper will be a valuable asset to the clinician, in the detection congestive heart failure.Entities:
Year: 2010 PMID: 20339561 PMCID: PMC2842886 DOI: 10.4061/2009/807379
Source DB: PubMed Journal: Cardiol Res Pract ISSN: 2090-0597 Impact factor: 1.866
Figure 1Second-order difference plots of a normal (a) and CHF (b) patient. Note the different scales in the two plots. Different scales were chosen to show clearly the structure in the two plots.
Figure 2(a) CTM(r) versus r (b) D(r) versus r for an N (blue) and CHF (red) subject.
Figure 3(a) CCTM1(r) versus r (b) CCTM2(r) versus r (c) CCTM3(r) versus r (d) CCTM4(r) versus r for an N (blue) and CHF (red) subject.
Figure 4SDRR of normal (∗) and CHF (O) patients. There are 36 N (labeled as 1,…, 36) and 36 CHF (labeled as 37,…, 72).
T test results for CTM(r), D(r), CCTM1(r), CCTM2(r), CCTM3(r), CCTM4(r), and SDRR. The r value corresponds to the lowest value of p for each of these measures.
| Measure used |
|
|
| ci (30000) | ci (70000) |
|---|---|---|---|---|---|
| CTM( | 0.015 | 6.63 | 7.5688 | [−0.3666 −0.2067] | [−0.3965 −0.2415] |
| (−10) | (−12) | ||||
|
| 0.035 | 3.4314 | 3.1584 | [0.0039 0.0063] | [0.0043 0.0066] |
| (−12) | (−14) | ||||
| CCTM1( | 0.015 | 3.5834 | 2.3475 | [−0.0741 −0.0380] | [−0.0808 −0.0465] |
| (−8) | (−10) | ||||
| CCTM2( | 0.015 | 4.5038 | 1.1636 | [−0.1004 −0.0543] | [−0.1102 −0.0642] |
| (−9) | (−10) | ||||
| CCTM3( | 0.015 | 1.9055 | 2.5181 | [−0.0972 −0.0536] | [−0.1015 −0.0607] |
| (−9) | (−11) | ||||
| CCTM4( | 0.015 | 3.5953 | 1.1240 | [−0.1002 −0.0545] | [−0.1094 −0.0638] |
| (−9) | (−10) | ||||
| SDRR | 3.7432 | 6.0420 | [0.0092 0.0303] | [0.0123 0.0339] | |
| (−4) | (−5) |
Final classification results for different feature sets and distance measures.
| Feature set used | No. of | No. of misclassified |
|---|---|---|
| misclassified | patients | |
| patients | (Mahalanbois | |
| (Euclidean distance) | distance | |
| CTM( | 2 | 2 |
| {CTM( | 1 | 0 |
| {CTM( | 0 | 0 |
| CCTM1( | ||
| CCTM3( | ||
| SDRR | 1 | 1 |