Literature DB >> 12234718

Analysis of respiratory pressure-volume curves in intensive care medicine using inductive machine learning.

Steven Ganzert1, Josef Guttmann, Kristian Kersting, Ralf Kuhlen, Christian Putensen, Michael Sydow, Stefan Kramer.   

Abstract

We present a case study of machine learning and data mining in intensive care medicine. In the study, we compared different methods of measuring pressure-volume curves in artificially ventilated patients suffering from the adult respiratory distress syndrome (ARDS). Our aim was to show that inductive machine learning can be used to gain insights into differences and similarities among these methods. We defined two tasks: the first one was to recognize the measurement method producing a given pressure-volume curve. This was defined as the task of classifying pressure-volume curves (the classes being the measurement methods). The second was to model the curves themselves, that is, to predict the volume given the pressure, the measurement method and the patient data. Clearly, this can be defined as a regression task. For these two tasks, we applied C5.0 and CUBIST, two inductive machine learning tools, respectively. Apart from medical findings regarding the characteristics of the measurement methods, we found some evidence showing the value of an abstract representation for classifying curves: normalization and high-level descriptors from curve fitting played a crucial role in obtaining reasonably accurate models. Another useful feature of algorithms for inductive machine learning is the possibility of incorporating background knowledge. In our study, the incorporation of patient data helped to improve regression results dramatically, which might open the door for the individual respiratory treatment of patients in the future.

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Year:  2002        PMID: 12234718     DOI: 10.1016/s0933-3657(02)00053-2

Source DB:  PubMed          Journal:  Artif Intell Med        ISSN: 0933-3657            Impact factor:   5.326


  8 in total

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2.  Artificial Intelligence and Machine Learning in Anesthesiology.

Authors:  Christopher W Connor
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3.  A Comparison of Intensive Care Unit Mortality Prediction Models through the Use of Data Mining Techniques.

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Review 5.  Artificial intelligence as a fundamental tool in management of infectious diseases and its current implementation in COVID-19 pandemic.

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6.  A hover view over effectual approaches on pandemic management for sustainable cities - The endowment of prospective technologies with revitalization strategies.

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7.  Pressure-dependent stress relaxation in acute respiratory distress syndrome and healthy lungs: an investigation based on a viscoelastic model.

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Review 8.  Restructured society and environment: A review on potential technological strategies to control the COVID-19 pandemic.

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  8 in total

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