Détail du document
Identifiant

oai:arXiv.org:2310.13654

Sujet
Computer Science - Machine Learnin... Computer Science - Artificial Inte...
Auteur
Tusar, Md. Taufiqul Haque Khan Islam, Md. Touhidul Sakil, Abul Hasnat
Catégorie

Computer Science

Année

2023

Date de référencement

25/10/2023

Mots clés
patients whom study disease parkinson machine learning
Métrique

Résumé

One of the most catastrophic neurological disorders worldwide is Parkinson's Disease.

Along with it, the treatment is complicated and abundantly expensive.

The only effective action to control the progression is diagnosing it in the early stage.

However, this is challenging because early detection necessitates a large and complex clinical study.

This experimental work used Machine Learning techniques to automate the early detection of Parkinson's Disease from clinical characteristics, voice features and motor examination.

In this study, we develop ML models utilizing a public dataset of 130 individuals, 30 of whom are untreated Parkinson's Disease patients, 50 of whom are Rapid Eye Movement Sleep Behaviour Disorder patients who are at a greater risk of contracting Parkinson's Disease, and 50 of whom are Healthy Controls.

We use MinMax Scaler to rescale the data points, Local Outlier Factor to remove outliers, and SMOTE to balance existing class frequency.

Afterwards, apply a number of Machine Learning techniques.

We implement the approaches in such a way that data leaking and overfitting are not possible.

Finally, obtained 100% accuracy in classifying PD and RBD patients, as well as 92% accuracy in classifying PD and HC individuals.

;Comment: 12 pages, 9 figures, 5 tables

Tusar, Md. Taufiqul Haque Khan,Islam, Md. Touhidul,Sakil, Abul Hasnat, 2023, An experimental study for early diagnosing Parkinson's disease using machine learning

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