JA Purity IV
  • HOME
    • Business
    • Corporate
    • Logistics
    • Product
    • News / Magazine
  • MTECH PROJECTS
    • COMPUTER SCIENCE
      • MTech Python Projects
        • Machine Learning Projects
        • Deep Learning Projects
        • Blockchain Projects
        • django Projects
      • MTech Java Projects
        • Cloud Computing Projects
        • Data Mining Projects
        • Mobile Computing Projects
        • Networking Projects
      • MTech NS2 Projects
        • Wireless Communication Projects
        • Vehicular Technology Projects
      • MTech Hadoop Projects
      • MTech Android Projects
    • ELECTRONICS
      • MTech DSP Projects
      • MTech DIP Projects
      • MTech VLSI Projects
      • MTech Communication Projects
    • ELECTRICAL
      • MTech Power Systems Projects
      • MTech Power Electronics Projects
      • MTech Control Systems Projects
    • OTHER
      • Chemical Projects
      • Mechanical Projects
      • All Other Projects
  • EMBEDDED KITS
    • MTech Embedded Kits
    • BTech Embedded Kits
  • PROJECTS+
  • PUBLISHING
    • Research Publishing
    • Authors Guidelines
    • Publishing Policy
  • CONTACT US

Contact Us

  • 4517 Washington Ave. Manchester, Kentucky 39495
  • (201) 555-0124
  • hello@purityiv.com

Welcome to MTech Projects - Online Projects for MTech Students

  • My Account
  • Careers
  • Downloads
  • Blog
JA Purity IV
  • Email Us
  • Phone Number
  • Open Hours
  • HOME
    • Business
    • Corporate
    • Logistics
    • Product
    • News / Magazine
  • MTECH PROJECTS

    MTech Python Projects

    • Machine Learning Projects
    • Deep Learning Projects
    • Blockchain Projects
    • django Projects

    MTECH JAVA PROJECTS

    • Cloud Computing Projects
    • Data Mining Projects
    • Mobile Computing Projects
    • Networking Projects

    MTECH NS2 PROJECTS

    • Wireless Communication Projects
    • Vehicular Technology Projects
    • MTech Hadoop Projects
    • MTech Android Projects

    ELECTRONICS

    • MTech DSP Projects
    • MTech DIP Projects
    • MTech VLSI Projects
    • MTech Communication Projects

    ELECTRICAL

    • MTech Power Systems Projects
    • MTech Power Electronics Projects
    • MTech Control Systems Projects

    OTHER

    • Chemical Projects
    • Mechanical Projects
    • All Other Projects
  • EMBEDDED KITS
    • MTech Embedded Kits
    • BTech Embedded Kits
  • PROJECTS+
  • PUBLISHING
    • Research Publishing
    • Authors Guidelines
    • Publishing Policy
  • CONTACT US

Project Enquiry

  1. You are here:  
  2. Home
  3. MTech Python Projects
  4. Machine Learning for Detection of Acute Respiratory Distress Syndrome with Label Uncertainty Accounting
Details
Category: MTech Python Projects
By MTech Projects
MTech Projects
06.Dec
Hits: 1

Machine Learning for Detection of Acute Respiratory Distress Syndrome with Label Uncertainty Accounting

PROJECT TITLE :

Accounting for Label Uncertainty in Machine Learning for Detection of Acute Respiratory Distress Syndrome

ABSTRACT:

When training a machine learning algorithm for a supervised-learning job in some clinical applications, the system's performance may be harmed by ambiguity in the accurate labeling of some patients. Because of uncertainty in the patient's condition or insufficient reliability of the diagnostic criteria, even clinical professionals may have less confidence in assigning a medical diagnosis to some patients. As a result, some cases utilized in algorithm training may be mislabeled, causing the algorithm's performance to suffer. In certain circumstances, though, specialists may be able to quantify their diagnostic uncertainty. When training an algorithm to detect individuals who develop acute respiratory distress syndrome, we provide a robust technique based on support vector machines (SVM) to account for such clinical diagnostic ambiguity (ARDS). ARDS is a severely unwell syndrome that is diagnosed using clinical criteria that are acknowledged to be flawed. Uncertainty in the diagnosis of ARDS is represented by a graded weight of confidence assigned to each training label. In order to avoid overfitting, we employed a unique time-series sampling strategy to handle the problem of intercorrelation among the longitudinal clinical data from each patient used in model training. When we compare our method that accounts for the uncertainty of training labels with a traditional SVM algorithm, preliminary findings show that we can obtain considerable improvement in the performance of the system to predict patients with ARDS on a hold-out sample.

Did you like this research project?

To get this research project Guidelines, Training and Code... Click Here

Previous article: A Two-Stage Model for Predicting the Lengths of Stay of Surgical Patients Using an Electronic Patient Database A Two-Stage Model for Predicting the Lengths of Stay of Surgical Patients Using an Electronic Patient Database Next article: Imbalanced Data: Active Learning An Online Weighted Extreme Learning Machine Solution Imbalanced Data: Active Learning An Online Weighted Extreme Learning Machine Solution
COMPUTER SCIENCE PROJECTS MTech Java Projects MTech .Net Projects MTech NS2 Projects MTech Android Projects MTech Hadoop Projects MTech Python Projects ELECTRONICS PROJECTS ELECTRICAL PROJECTS EMBEDDED PROJECTS MECHANICAL PROJECTS

sell academic m.tech, btech and be projects online

sell academic m.tech, btech and be projects online

Academic Final Year Projects

QUICK LINKS

  • Python Projects
  • Java Projects
  • Android Projects
  • Digital Signal Processing
  • Image Processing Projects
  • VLSI Projects
  • Power Systems
  • Power Electronics
SUPPORT
+91 9573777164
9:00am - 6:00pm IST
info@mtechprojects.com

Navigate

  • ABOUT
  • TESTIMONIALS
  • FIND A DEALER
  • CAREERS

CONTACT

  • CONTACT
  • FAQ
  • RESOURCES
  • EMAIL US

Useful links

  • REFUND & RETURN POLICY
  • PRIVACY POLICIES

Support

  • FACEBOOK
  • TWITTER
  • PINTEREST
  • GOOGLE PLUS
Copyright © 2026 MTech Projects. All Rights Reserved.