volume 101 pages 102497

AI-Driven Innovations in Alzheimer's Disease: Integrating Early Diagnosis, Personalized Treatment, and Prognostic Modelling

Mayur B. Kale 1
Nitu Wankhede 2
Rupali Pawar 3
Suhas Ballal 4
Rohit Kumawat 5
Ramkishan Kumawat 5
Manish Goswami 6
Brijesh G. Taksande 8
Aman Upaganlawar 9
Milind J. Umekar 10
Spandana Rajendra Kopalli 11
SUSHRUTA KOPPULA 12
1
 
Smt. Kishoritai Bhoyar College of Pharmacy, Kamptee, Nagpur, Maharashtra, India- 441002. Electronic address: mayur.kale28@gmail.com.
2
 
Smt. Kishoritai Bhoyar College of Pharmacy, Kamptee, Nagpur, Maharashtra, India- 441002. Electronic address: nitu.wankhede211994@gmail.com.
3
 
Smt. Kishoritai Bhoyar College of Pharmacy, Kamptee, Nagpur, Maharashtra, India- 441002. Electronic address: pawarrupali327@gmail.com.
6
 
Chandigarh Pharmacy College, Chandigarh Group of Colleges, Jhanjeri, Mohali- 140307, Punjab, India. Electronic address: Manish2411.research@cgcjhanjeri.in.
8
 
Smt. Kishoritai Bhoyar College of Pharmacy, Kamptee, Nagpur, Maharashtra, India- 441002. Electronic address: brijeshtaksande@gmail.com.
9
 
SNJB's Shriman Sureshdada Jain College of Pharmacy, Neminagar, Chandwad, Nashik, Maharashtra, India. Electronic address: amanrxy@gmail.com.
10
 
Smt. Kishoritai Bhoyar College of Pharmacy, Kamptee, Nagpur, Maharashtra, India- 441002. Electronic address: drmilindumekar@gmail.com.
Publication typeJournal Article
Publication date2024-11-01
scimago Q1
wos Q1
SJR4.216
CiteScore20.6
Impact factor12.4
ISSN15681637, 18729649
Abstract
Alzheimer's disease (AD) presents a significant challenge in neurodegenerative research and clinical practice due to its complex etiology and progressive nature. The integration of artificial intelligence (AI) into the diagnosis, treatment, and prognostic modelling of AD holds promising potential to transform the landscape of dementia care. This review explores recent advancements in AI applications across various stages of AD management. In early diagnosis, AI-enhanced neuroimaging techniques, including MRI, PET, and CT scans, enable precise detection of AD biomarkers. Machine learning models analyze these images to identify patterns indicative of early cognitive decline. Additionally, AI algorithms are employed to detect genetic and proteomic biomarkers, facilitating early intervention. Cognitive and behavioral assessments have also benefited from AI, with tools that enhance the accuracy of neuropsychological tests and analyze speech and language patterns for early signs of dementia. Personalized treatment strategies have been revolutionized by AI-driven approaches. In drug discovery, virtual screening and drug repurposing, guided by predictive modelling, accelerate the identification of effective treatments. AI also aids in tailoring therapeutic interventions by predicting individual responses to treatments and monitoring patient progress, allowing for dynamic adjustment of care plans. Prognostic modelling, another critical area, utilizes AI to predict disease progression through longitudinal data analysis and risk prediction models. The integration of multi-modal data, combining clinical, genetic, and imaging information, enhances the accuracy of these predictions. Deep learning techniques are particularly effective in fusing diverse data types to uncover new insights into disease mechanisms and progression. Despite these advancements, challenges remain, including ethical considerations, data privacy, and the need for seamless integration of AI tools into clinical workflows. This review underscores the transformative potential of AI in AD management while highlighting areas for future research and development. By leveraging AI, the healthcare community can improve early diagnosis, personalize treatments, and predict disease outcomes more accurately, ultimately enhancing the quality of life for individuals with AD.
Found 
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GOST Copy
Kale M. et al. AI-Driven Innovations in Alzheimer's Disease: Integrating Early Diagnosis, Personalized Treatment, and Prognostic Modelling // Ageing Research Reviews. 2024. Vol. 101. p. 102497.
GOST all authors (up to 50) Copy
Kale M. B., Wankhede N., Pawar R., Ballal S., Kumawat R., Kumawat R., Goswami M., Khalid M., Taksande B. G., Upaganlawar A., Umekar M. J., Kopalli S. R., KOPPULA S. AI-Driven Innovations in Alzheimer's Disease: Integrating Early Diagnosis, Personalized Treatment, and Prognostic Modelling // Ageing Research Reviews. 2024. Vol. 101. p. 102497.
RIS |
Cite this
RIS Copy
TY - JOUR
DO - 10.1016/j.arr.2024.102497
UR - https://linkinghub.elsevier.com/retrieve/pii/S1568163724003155
TI - AI-Driven Innovations in Alzheimer's Disease: Integrating Early Diagnosis, Personalized Treatment, and Prognostic Modelling
T2 - Ageing Research Reviews
AU - Kale, Mayur B.
AU - Wankhede, Nitu
AU - Pawar, Rupali
AU - Ballal, Suhas
AU - Kumawat, Rohit
AU - Kumawat, Ramkishan
AU - Goswami, Manish
AU - Khalid, Mohammad
AU - Taksande, Brijesh G.
AU - Upaganlawar, Aman
AU - Umekar, Milind J.
AU - Kopalli, Spandana Rajendra
AU - KOPPULA, SUSHRUTA
PY - 2024
DA - 2024/11/01
PB - Elsevier
SP - 102497
VL - 101
PMID - 39293530
SN - 1568-1637
SN - 1872-9649
ER -
BibTex
Cite this
BibTex (up to 50 authors) Copy
@article{2024_Kale,
author = {Mayur B. Kale and Nitu Wankhede and Rupali Pawar and Suhas Ballal and Rohit Kumawat and Ramkishan Kumawat and Manish Goswami and Mohammad Khalid and Brijesh G. Taksande and Aman Upaganlawar and Milind J. Umekar and Spandana Rajendra Kopalli and SUSHRUTA KOPPULA},
title = {AI-Driven Innovations in Alzheimer's Disease: Integrating Early Diagnosis, Personalized Treatment, and Prognostic Modelling},
journal = {Ageing Research Reviews},
year = {2024},
volume = {101},
publisher = {Elsevier},
month = {nov},
url = {https://linkinghub.elsevier.com/retrieve/pii/S1568163724003155},
pages = {102497},
doi = {10.1016/j.arr.2024.102497}
}
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