The condition of the fetus during labour is inferred from the continuous plot of fetal heart
rate and uterine contractions (cardiotocogram, CTG). This can be _ difficult to interpret
which results in both unnecessary intervention and a failure to intervene when necessary
causing potentially preventable neurological damage and mortality. Conventional computing
approaches have not been successful in addressing these problems. This is perhaps because
the correct interpretation of fetal condition requires physiological knowledge, considerable
practical experience and knowledge of the specific patient.
The work described in this thesis is concerned with the investigation of artificial intelligence
techniques to assist in the interpretation of fetal condition and advise on labour
management. A fundamental investigation examined the performance of five types of scalp
electrodes for obtaining the fetal electrocardiogram (ECG), from which heart rate is
derived, and examined the factors which hamper fetal ECG data acquisition. New methods
were developed to classify the important features from the CTG and included an
investigation using neural networks. Other CTG features were classified using novel
numerical algorithms developed closely with experts. An expert system, guided by a
database of rules obtained from experts, was used to process and interpret changes in the
CTG features by taking account of patient specific information. This hybrid approach was
adopted to improve performance and reliability.
After two internal evaluations had found the system obtained a performance comparable
with local experts, an extensive external validation was undertaken. This study involved 17
experts from 16 leading centres within the UK. Each expert and the system reviewed 50
cases twice, at least one month apart which contained those considered most difficult to
interpret selected from a database of 2400 high risk labours. A novel method was developed
to present all the relevant clinical information in a way which approximated the clinical
situation. The reviewers scored each 15 minutes of recording according to the concern they
had for the fetus and the management they considered appropriate. In this respect, this is the
first reported study to examine the performance of expert obstetricians in the management
of labour. A new method was derived to measure the agreement between the scores
obtained and is applicable to other areas where it is required to measure the similarity
between time related sequences. This study found that the experts agreed well and were
consistent in their management of the cases. The system was indistinguishable from the
experts, except it was more consistent, even when used by an engineer with little knowledge
of labour management.
This study has shown that expertise in fetal monitoring is achievable in which case the
current evidence suggests that this is not being adequately transferred to clinicians. The
challenge remains to formulate a method to effectively transfer knowledge to the labour
ward and thereby address the real and practical problems which face fetal monitoring today.
This study demonstrates that intelligent systems could provide the vehicle to achieve this.
I dedicate this work to the memory of my father, Bradley Kenneth Keith with a hope that he
always believed it possible. I know he would have had some interesting comments to make
and I sadly miss the opportunity of discussing them with him.
I also dedicate this work to my mother for always being there, and to my wife Michelle for
her unwavering support, patience and most of all her encouragement throughout this work.
Date of Award | 1993 |
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Original language | English |
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Awarding Institution | |
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Intelligent fetal monitoring and decision support in the management of labour
Keith, R. D. F. (Author). 1993
Student thesis: PhD