dc.description.abstract |
This thesis deals with the work done in the areas of
analysis of electrocardiogram and cardiovascular and pulmonary
systems. Electrocardiogram is extensively used by cardiologists
in clinical interpretations for knowing the functioning of the
heart. Electrocardiogram has good correlation with the mechanical
activity of the heart which is responsible for the flow of blood
throughout the circulatory system. The pulmonary system is
responsible for maintaining the proper level of Oxygen content
inside the blood. Proper functioning of the cardiovascular system
is dependent on the state of the cardiovascular and pulmonary
systems.
The work done for this thesis can be divided into two
major sections°
(i) Analysis of electrocardiogram
(ii) Analysis of cardiovascular and pulmonary systems.
New methods have been developed for the analysis of electrocardio
gram. Existing models with modifications have been used for the
analysis of cardiovascular and pulmonary systems.
ANALYSIS OF ELECTRO CARDIOGRAM
The first section deals with the accurate representation
of ECG signal, derivation of diagnostically significant parameters,
and development of the methodology for classification of cases
according to nature of abnormality in ECG patterns. Twelve lead
-iii-
ECG system has been used for this work. Measurement error and
lead proximity corrections are applied to lead potentials using
Burger triangle representation. Peak potentials at leads I,II and
III have been used to find the Frontal plane Peak Resultant
vectors (FPR) for various segments of ECG pattern. The precisions
achieved for amplitude and phase are 0.0000002 mV and 0.00O00Hdegree,
respectively. From the set of normal cases, the different
ranges of variation for various parameters are established. The
relative valaes of parameters showed very good clustering in the
normal pattern space.
Sine, cosine, unit impulse, exponential and Gaussian
functions have some limitations as the basis functions for the
model representation of ECG waves. Therefore, a set of new mathe
matically defined basis functions is proposed for various segments
of ECG wave. These basis functions have specified shapes. The
coefficients of the polynomial expressions defining the various
basis functions are computed and stored once for all. The main
variations in the ECG patterns are horizontal and vertical elong
ation and/or contraction of various segments. There are also
relative phase shifts among the segments and also lead to lead
variations. All these have been properly taken into account in
this model. In addition to the permanently stored model parameters
the number of parameters required to generate the corrected pattern
at the six frontal plane leads are less than or equal to eighteen.
The set of ECG patterns has been defined by a mathematical expres
sion. The ECG pattern at any frontal plane lead with measurement
and lead proximity corrections can be generated by this model
-ivexpression.
There is a considerable data compression resulting in
less memory storage requirement in computers.
Simple and composite binary codes have been developed for
representing the diagnostic parameters as symptoms. The parameters
within and beyond the normal range are represented by a 0 and 1,
respectively. For composite binary code, the parameters are
represented as 11, for values within normal range, 01, for values
below normal range and 10, for values above normal range. Symptom
patterns are specified for four categories namely, normal case,
myocardial infarction, .right ventricular hypertrophy and left
ventricular hypertrophy. Depending upon the matching or mismatch
ing of a symptom of a case with the specified symptom, the multi
plier may be taken as 1, 0 or -1 for the respective symptom.
Linear programming has been used to find the weight factors of
symptoms with respect to different categories. The cases are
classified into their respective categories by computing and
comparing weighted sums of symptoms for a case with respect to
different categories. The weighted sum is expressed as,
N
Y(I) = ( S W(J) * MM(I,J)
3=1
where, j corresponds to the symptom number, MM the symptom multi
plier, I the category, and Wthe weight factor.
The development of the methodology and computation of
coefficients to be stored once for all has been carried out on
DEC-20 computer. The computation for the final interpretation
became quite simple and showed a possibility of microprocessor
-Vimplementation.
The software implementation of the method on a
8085 based microprocessor system is also given in this work.
The method developed here using only three of the twelve
leads is simple and efficient for ECG interpretation. The sample
cases of myocardial infarction, left ventricular hypertrophy,
right ventricular hypertrophy, and normal categories have been
properly discriminated by this method. The microprocessor imple
mentation shows that the method is well suited for bedside online
analysis in hospitals.
ANALYSIS OF CARDIOVASCULAR AND PULMONARY SYSTEMS
The invasive measurements in the cardiovascular system
are to be limited in number due to discomfort to the patient.
This restricts the number of measurable physiological parameters.
Therefore, with limited number of measured quantities a large
number of diagnostically significant additional parameters for
the system are found out using parameter estimation techniques.
Clark et al.(1980) presented a modified Wind Kessel model of left
heart systemic circulation system and proposed a method for its
parameter estimation. This model has been used with modification
in the present work for studying the effect of variation of aortic
valve resistance, resistances and compliances of proximal and
distal parts of left heart systemic circuit, peripheral resistance,
inertance of long fluid columns and aortic valve switching func
tions for systolic and diastolic periods. Maxima, minima and
average values of responses are computed and considered for
comparison purposes. The work has been done to establish
-VIcorrelation
among abnormalities of cardiovascular system, affected
parameters and system responses. Simulation of certain abnormal
states and associated mechanism is also possible. During the
analysis a new source of mechanical arrhythmia has been observed.
The means to arrest this arrhythmia are also discussed in this
work.
Large number of lumped parameter models of respiratory
system has been developed so far. The respiratory system has
been modelled using R-C or RLC parameters. In the present work
RC and RLC models have been used for the analysis. The parameters
have been estimated by the solution of the system equations for
these models.This model analysis reduces the invasive measurements
considerably. The loss of diagnostic information is compensated
by the estimation of additional parameters. The results of the
analysis are useful for knowing the state of overall pulmonary
system and comparison of cases of different categories. |
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