PRECISION MEDICINE IN INTERNAL MEDICINE: PERSONALIZED APPROACHES TO TREATMENT

Main Article Content

Sana kainat
Dr. Rida Zahid
Mohit Lakkimsetti
Tariq Rafique
Jehangir Ali Zuberi
Zakir Hidayatallah

Keywords

Precision medicine, Internal medicine, Bioinformatics, Diagnostic accuracy Disease susceptibility, Targeted interventions, Genetic markers, Molecular markers, Data infrastructure, Ethical considerations, Genetic material.

Abstract

Background: Precision medicine represents a significant evolution in the field of internal medicine. Unlike traditional approaches that apply uniform treatments to all patients, precision medicine tailors healthcare based on individual patient characteristics.


Objective: This study aims to explore the current status, potential benefits, and challenges associated with the implementation of precision medicine in internal medicine.


Methods: The methodology involves the use of genomics, proteomics, and bioinformatics to identify unique genetic and molecular signatures in patients. By integrating controlled and clinical data, the study aims to enhance diagnostic accuracy and predict disease susceptibility, leading to personalized treatment strategies.


Results: The findings indicate that precision medicine can significantly improve patient outcomes by offering individualized treatment plans. The ability to detect specific genetic and molecular markers allows for targeted interventions, reducing adverse effects and providing a deeper understanding of complex diseases.


Conclusion: Precision medicine holds the promise of transforming internal medicine by providing more accurate and effective treatments. However, its development faces challenges such as the need for robust data infrastructure, interdisciplinary collaboration, and ethical considerations regarding the use of genetic material. Despite these hurdles, the future of internal medicine is poised to benefit immensely from the advancements in precision medicine.

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