Application of machine intelligence for osteoarthritis classification: a classical implementation and a quantum perspective

Autor: Dimitrios Tsaopoulos, Christos Kokkotis, Elpiniki I. Papageorgiou, Serafeim Moustakidis, Eirini Christodoulou, Nikolaos Papandrianos
Rok vydání: 2019
Předmět:
Computer science
Computational intelligence
02 engineering and technology
Osteoarthritis
Variation (game tree)
Theoretical Computer Science
03 medical and health sciences
0302 clinical medicine
Artificial Intelligence
0202 electrical engineering
electronic engineering
information engineering

Feature (machine learning)
medicine
Osteoarthritis is the most common form of arthritis in the knee that comes with a variation in symptoms' intensity
frequency and pattern. Knee OA (KOA) is often diagnosed using invasive and expensive methods that can measure changes in joint morphology and function. Early and accurate identification of significant risk factors in clinical data is of vital importance in diagnosing KOA. A machine intelligence approach is proposed here to enable automated
non-invasive identification of risk factors from self-reported clinical data about joint symptoms
disability
function and general health. The proposed methodology was applied to recognize participants with symptomatic KOA or being at high risk of developing KOA in at least one knee. Different machine learning and deep learning algorithms were tested and compared in terms of multiple criteria e.g. accuracy
per class accuracy and execution time. Deep learning was proved to be the most effective in terms of accuracy with classification accuracies up to 86.95%
evaluated on data from the osteoarthritis initiative study. Insights about ten different feature subsets and their effect on classification accuracy are provided. The proposed methodology was also demonstrated in subgroups defined by gender and age. The results suggest that machine intelligence and especially deep learning may facilitate clinical evaluation
monitoring and even prediction of knee osteoarthritis. Apart from the classical implementation of the proposed methodology
a quantum perspective is also discussed highlighting the future application of quantum computers in OA diagnosis

030203 arthritis & rheumatology
business.industry
Applied Mathematics
Deep learning
Perspective (graphical)
medicine.disease
Class (biology)
3. Good health
Identification (information)
Computational Theory and Mathematics
020201 artificial intelligence & image processing
Artificial intelligence
business
Software
Zdroj: Quantum Machine Intelligence. 1:73-86
ISSN: 2524-4914
2524-4906
DOI: 10.1007/s42484-019-00008-3
Popis: Osteoarthritis is the most common form of arthritis in the knee that comes with a variation in symptoms’ intensity, frequency and pattern. Knee OA (KOA) is often diagnosed using invasive and expensive methods that can measure changes in joint morphology and function. Early and accurate identification of significant risk factors in clinical data is of vital importance in diagnosing KOA. A machine intelligence approach is proposed here to enable automated, non-invasive identification of risk factors from self-reported clinical data about joint symptoms, disability, function and general health. The proposed methodology was applied to recognize participants with symptomatic KOA or being at high risk of developing KOA in at least one knee. Different machine learning and deep learning algorithms were tested and compared in terms of multiple criteria e.g. accuracy, per class accuracy and execution time. Deep learning was proved to be the most effective in terms of accuracy with classification accuracies up to 86.95%, evaluated on data from the osteoarthritis initiative study. Insights about ten different feature subsets and their effect on classification accuracy are provided. The proposed methodology was also demonstrated in subgroups defined by gender and age. The results suggest that machine intelligence and especially deep learning may facilitate clinical evaluation, monitoring and even prediction of knee osteoarthritis. Apart from the classical implementation of the proposed methodology, a quantum perspective is also discussed highlighting the future application of quantum computers in OA diagnosis.
Databáze: OpenAIRE