Proposal and Definition of an Intelligent Clinical Decision Support System Applied to the Screening and Early Diagnosis of Breast Cancer.
Manuel Casal-GuisandeAntía Álvarez-PazóJorge Cerqueiro-PequeñoJosé-Benito Bouza-RodríguezGustavo Peláez-LouridoAlberto Comesaña-CamposPublished in: Cancers (2023)
Breast cancer is the most frequently diagnosed tumor pathology on a global scale, being the leading cause of mortality in women. In light of this problem, screening programs have been implemented on the population at risk in the form of mammograms, starting in the 20th century. This has considerably reduced the associated deaths, as well as improved the prognosis of the patients who suffer from this disease. In spite of this, the evaluation of mammograms is not without certain variability and depends, to a large extent, on the experience and training of the medical team carrying out the assessment. With the aim of supporting the evaluation process of mammogram images and improving the diagnosis process, this work presents the design, development and proof of concept of a novel intelligent clinical decision support system, grounded on two predictive approaches that work concurrently. The first of them applies a series of expert systems based on fuzzy inferential engines, geared towards the treatment of the characteristics associated with the main findings present in mammograms. This allows the determination of a series of risk indicators, the Symbolic Risks , related to the risk of developing breast cancer according to the different findings. The second one implements a classification machine learning algorithm, which using data related to mammography findings as well as general patient information determines another metric, the Statistical Risk , also linked to the risk of developing breast cancer. These risk indicators are then combined, resulting in a new indicator, the Global Risk . This could then be corrected using a weighting factor according to the BI-RADS category, allocated to each patient by the medical team in charge. Thus, the Corrected Global Risk is obtained, which after interpretation can be used to establish the patient's status as well as generate personalized recommendations. The proof of concept and software implementation of the system were carried out using a data set with 130 patients from a database from the School of Medicine and Public Health of the University of Wisconsin-Madison. The results obtained were encouraging, highlighting the potential use of the application, albeit pending intensive clinical validation in real environments. Moreover, its possible integration in hospital computer systems is expected to improve diagnostic processes as well as patient prognosis.
Keyphrases
- clinical decision support
- machine learning
- public health
- healthcare
- electronic health record
- deep learning
- case report
- breast cancer risk
- emergency department
- big data
- mental health
- magnetic resonance imaging
- type diabetes
- primary care
- pregnant women
- adipose tissue
- insulin resistance
- palliative care
- risk factors
- ejection fraction
- coronary artery disease
- optical coherence tomography
- newly diagnosed
- risk assessment
- computed tomography
- chronic kidney disease
- physical activity
- prognostic factors
- clinical practice
- human health
- liquid chromatography
- skeletal muscle
- acute care
- dual energy
- patient reported
- image quality