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Identifying the presence and severity of dementia by applying interpretable machine learning techniques on structured clinical records. | LitMetric

AI Article Synopsis

  • Early detection of dementia is vital, but traditional diagnostic methods often miss the mark; leveraging patients' Electronic Medical Records with machine learning models can help identify both the presence and severity of the disease more accurately.
  • The study uses a hybrid approach, involving dementia experts and machine learning techniques like random forests and decision trees, to classify and interpret dementia cases based on structured clinical data from elderly patients.
  • The findings show strong predictive accuracy for dementia diagnosis (f1-score of 0.93) and severity (f1-score of 0.81), while also enhancing the interpretability of the models through decision trees.

Article Abstract

Background: Dementia develops as cognitive abilities deteriorate, and early detection is critical for effective preventive interventions. However, mainstream diagnostic tests and screening tools, such as CAMCOG and MMSE, often fail to detect dementia accurately. Various graph-based or feature-dependent prediction and progression models have been proposed. Whenever these models exploit information in the patients' Electronic Medical Records, they represent promising options to identify the presence and severity of dementia more precisely.

Methods: The methods presented in this paper aim to address two problems related to dementia: (a) Basic diagnosis: identifying the presence of dementia in individuals, and (b) Severity diagnosis: predicting the presence of dementia, as well as the severity of the disease. We formulate these two tasks as classification problems and address them using machine learning models based on random forests and decision tree, analysing structured clinical data from an elderly population cohort. We perform a hybrid data curation strategy in which a dementia expert is involved to verify that curation decisions are meaningful. We then employ the machine learning algorithms that classify individual episodes into a specific dementia class. Decision trees are also used for enhancing the explainability of decisions made by prediction models, allowing medical experts to identify the most crucial patient features and their threshold values for the classification of dementia.

Results: Our experiment results prove that baseline arithmetic or cognitive tests, along with demographic features, can predict dementia and its severity with high accuracy. In specific, our prediction models have reached an average f1-score of 0.93 and 0.81 for problems (a) and (b), respectively. Moreover, the decision trees produced for the two issues empower the interpretability of the prediction models.

Conclusions: This study proves that there can be an accurate estimation of the existence and severity of dementia disease by analysing various electronic medical record features and cognitive tests from the episodes of the elderly population. Moreover, a set of decision rules may comprise the building blocks for an efficient patient classification. Relevant clinical and screening test features (e.g. simple arithmetic or animal fluency tasks) represent precise predictors without calculating the scores of mainstream cognitive tests such as MMSE and CAMCOG. Such predictive model can identify not only meaningful features, but also justifications of classification. As a result, the predictive power of machine learning models over curated clinical data is proved, paving the path for a more accurate diagnosis of dementia.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9578246PMC
http://dx.doi.org/10.1186/s12911-022-02004-3DOI Listing

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