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Pharmacovigilance01:19

Pharmacovigilance

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Post-marketing surveillance is a critical component of pharmaceutical regulation, often uncovering unanticipated adverse drug reactions (ADRs) once a drug is widely used over an extended period.
This process, termed pharmacovigilance, aims to detect, evaluate, and minimize harmful effects related to medication use. The data collection for pharmacovigilance depends on spontaneous reporting systems, where healthcare professionals or patients voluntarily report suspected ADRs.
In some cases, there...
961

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Fluorescent Paper Strips for the Detection of Diesel Adulteration with Smartphone Read-out
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Detecting Malware by Analyzing App Permissions on Android Platform: A Systematic Literature Review.

Adeel Ehsan1, Cagatay Catal1, Alok Mishra2

  • 1Department of Computer Science & Engineering, Qatar University, Doha 2713, Qatar.

Sensors (Basel, Switzerland)
|October 27, 2022
PubMed
Summary
This summary is machine-generated.

Android malware detection is challenging due to evolving threats. This study reviews research on app permission analysis as a key method for identifying malicious Android applications.

Keywords:
hybrid analysismalware detectionpermissions analysisstatic analysis

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Area of Science:

  • Computer Science
  • Cybersecurity
  • Software Engineering

Background:

  • Android's widespread adoption makes it a prime target for malware.
  • Malware poses significant financial and privacy risks to users.
  • The rapid evolution of malware necessitates advanced detection techniques.

Approach:

  • This work presents a systematic literature review (SLR) focusing on permission analysis for Android malware detection.
  • Identified studies were retrieved and selected for detailed analysis.
  • The review examines current challenges and various analytical approaches in the field.

Key Points:

  • Malware exploits Android's permission system to gain unauthorized access to device resources.
  • Analyzing requested permissions is crucial for identifying malicious applications.
  • There are 235 distinct permissions an Android app can request.

Conclusions:

  • Permission analysis is a vital strategy for effective Android malware detection.
  • Further research is needed to address the challenges in accurately identifying permission exploitation by malware.
  • The systematic review provides insights into existing methodologies and future research directions.