Apresentação - FEBRACE 2021

Wanghley Soares Martins
2 Mar 202103:01

Summary

TLDRThis research explores the development of an open-source system for diagnosing and predicting Parkinson's disease using inertial data, primarily focusing on tremor, a key symptom. The system includes a custom-built hardware platform based on Arduino® for data collection and a user-friendly interface for data visualization. By applying dimensional reduction and clustering techniques, the system differentiates between individuals with Parkinson's disease and those without. The project aims to provide a non-invasive, cost-effective solution for researchers, with all components freely available for further development and use in the medical and research community.

Takeaways

  • 😀 Wanghley Martins is a student and researcher at the Federal Institute of Brasilia, focusing on Parkinson's disease and individualized medicine.
  • 😀 The research aims to develop a system for diagnosing and predicting Parkinson's disease, based on the primary symptom: tremor.
  • 😀 Parkinson's disease is a neurodegenerative disorder with no current cure, primarily affecting motor functions and causing tremors in body parts like the hands.
  • 😀 Few computer systems are currently used for diagnosing or prognosing Parkinson's disease, presenting an opportunity for innovation in this field.
  • 😀 The research introduces a non-invasive, open-source system for diagnosing and predicting Parkinson's disease using inertial data collection.
  • 😀 The system includes hardware based on the Arduino® platform, capable of collecting inertial data wirelessly.
  • 😀 The developed interface is user-friendly and modern, designed to facilitate easy interaction with the hardware.
  • 😀 Dimensional reduction techniques were used to convert inertial data into two-dimensional graphs for analysis.
  • 😀 Clustering methods were employed to differentiate between Parkinson’s patients (Parkinsonians) and non-Parkinsonians based on collected data.
  • 😀 The entire system, both hardware and software, is open-source, allowing other researchers to modify and use it without cost.
  • 😀 More details, including published articles and source code, are available in the open-source repository linked in the description for further research.

Q & A

  • What is the main objective of the research presented in the transcript?

    -The main objective of the research is to develop a system capable of diagnosing and prognosing Parkinson's disease using its primary symptom, tremor, in a non-invasive way for the patient.

  • What is Parkinson's disease, and what are its primary symptoms?

    -Parkinson's disease is a neurodegenerative and incurable condition that mainly affects a person's movement. The primary symptom is tremor, which is usually located in the peripheral parts of the body, such as the hands.

  • Why is this research significant in the context of Parkinson's disease diagnosis and prognosis?

    -This research is significant because it aims to create a non-invasive system for diagnosing and prognosing Parkinson's disease, which is not widely available through computer systems at present.

  • What makes the system developed in this research different from other existing systems?

    -The system is open-source, meaning both its hardware and software are freely available for modification and use by other researchers. This allows for cost-effective implementation in further research and applications.

  • What type of data does the hardware developed in this research collect?

    -The hardware collects inertial data, such as acceleration and rotation of body movement, which can be used to analyze tremor characteristics.

  • How was the hardware for this system built?

    -The hardware was built using the Arduino® platform, with wireless communication capabilities, enabling the collection of inertial data from the patient.

  • What role does the user interface play in this research?

    -The user interface developed for this research is modern and user-friendly, designed to make it easier for users to operate the system and visualize the inertial data collected by the hardware.

  • How does the system differentiate between people with and without Parkinson's disease?

    -The system uses dimensional reduction techniques to transform inertial data into two-dimensional graphs. These graphs help differentiate between the characteristics of Parkinson's patients and non-Parkinson's individuals based on clustering analysis.

  • Is the system developed in this research accessible for other researchers?

    -Yes, the system is open-source, meaning the hardware designs, software, and related materials are publicly available. Other researchers can access these resources at no cost and adapt them for their own studies.

  • Where can more details about the research and the system be found?

    -More details about the research, including published articles, source code, and other related materials, can be accessed through the project's open-source repository linked in the description on YouTube.

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Ähnliche Tags
Parkinson's DiseaseDiagnosis SystemOpen SourceInertial DataMedical ResearchNeurodegenerative DiseaseHealthcare TechnologyArduino PlatformData VisualizationParkinson's ResearchWireless Communication
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