Women psychiatric health is one of the most neglected factors. Women mental health is very important as mentally healthy woman is the backbone of entire family and society. Even though many papers are published related to mental illness detection and treatment using various methods through survey, questionnaires, public health databases, clinical records, social media usage etc., by applying different Machine Learning (ML) algorithms for prediction, still there is huge room left for identifying and analyzing the mental illness through different means and applying ML for prediction, detection and assessment. The main aim of this research work is to demonstrate that speech is the easiest way to recognize symptoms of mental illness like depression, stress, anxiety, trauma etc. The speech signal carries hidden attributes like intensity, pauses, speech rate which reveal lot of information about the psychological fitness of a woman. The model is deployed on all the kernels of SVM to study and analyze the prediction accuracy of classification using three classification labels. The result obtained is more realistic in assessing the psychiatric fitness with overall accuracy of 90.78 percent.

1.
Wang
,
Xiaofeng
and
Li
,
Hu
and Sun, et.al.,
Prediction of Mental Health in Medical Workers During COVID-19 Based on Machine Learning
(
Frontiers in Public Health
, Volume
9
, doi:, PMID:
[PubMed]
; PMCID:
[PubMed]
,
2021
)
2.
Minutolo
,
Aniello
,
Chung
,
Jetli
,
Teo
,
Jason
,
Mental Health Prediction Using Machine Learning: Taxonomy, Applications, and Challenges
(
Applied Computational Intelligence and Soft Computing
,
Hindawi
, Vol
2022
, , Article ID 9970363,
2022
)
3.
Konda
Vaishnavi
,
U. Nikhitha
Kamathet
, et.al.,
Predicting Mental Health Illness using Machine Learning Algorithms
(
Journal of Physics: Conference Series
, Volume
2161
,
2021
)
4.
Anja
Thieme
and
Danielle
Belgrave
,
Microsoft Research Gavin Doherty, Machine Learning in Mental Health: A Systematic Review of the HCI Literature to Support the Development of Effective and Implementable ML Systems
(
ACM Trans. Comput.-Hum. Interact.
, Vol.
27
, No.
5
, Article 34, DOI: ,
2020
)
5.
Sofianita
Mutalib
, et. al.,
Mental Health Prediction Models Using Machine Learning in Higher Education Institution
(
Turkish Journal of Computer and Mathematics Education (TURCOMAT)
, Vol.
12
, No.
5
, ,
2021
)
6.
Pandey
,
Mayuresh
and
Parmar
et.al., “
Mental Health Prediction for Juvenile Using Machine Learning Techniques
”, in
Proceedings of the 4th International Conference on Advances in Science & Technology
,(,
2021
)
7.
Laijawala
,
Vidit
and
Aachaliya
,
Aadesh
, et.al., “
Mental Health Prediction using Data Mining: A Systematic Revie
”, in
Proceedings of the 3rd International Conference on Advances in Science & Technology (ICAST)
, (,
2020
)
8.
Akshi
Kumar
,
Machine learning for psychological disorder, prediction in Indians during COVID-19 nationwide lockdown
(
Intelligent Decision Technologies
, Volume
15
,
2021
), pp.
161
172
9.
Tate
A.E.
,
McCabe
R.C.
,
Larsson
H.
,
Lundström
S.
,
Lichtenstein
P.
, et al.
Predicting mental health problems in adolescence using machine learning techniques
(
PLOS ONE
15
(
4
): e0230389, ,
2020
), pp.
1
13
,
10.
T.
Jain
,
A.
Jain
,
P. S.
Hada
,
H.
Kumar
,
V. K.
Verma
and
A.
Patni
, "
Machine Learning Techniques for Prediction of Mental Health
", in
Third International Conference on Inventive Research in Computing Applications (ICIRCA)
(doi: ,
2021
), pp.
1606
1613
11.
Chancellor
S.
,
De Choudhury
M.
Methods in predictive techniques for mental health status on social media: a critical review
(
NPJ Digit Med.
doi: . PMID:
[PubMed]
; PMCID:
[PubMed]
,
2020
)
12.
Cho
G.
,
Yim
J.
,
Choi
Y.
,
Ko
J.
,
Lee
S.H.
Review of Machine Learning Algorithms for Diagnosing Mental Illness
(
Psychiatry Investigation
, PMID:
[PubMed]
; PMCID:
[PubMed]
, doi: ,
2019
), pp.
262
269
13.
Shatte
,
A.
,
Hutchinson
,
D.
, &
Teague
,
S.
(
2019
).
Machine learning in mental health: A scoping review of methods and applications
(
Psychological Medicine
,
49
(
9
), doi:, 2019), pp.
1426
1448
14.
Kim
J.
,
Lee
D.
,
Park
E.
,
Machine Learning for Mental Health in Social Media: Bibliometric Study
(
J Med Internet Res
2021
;
23
(
3
):
e24870
,URL: https://www.jmir.org/2021/3/e24870, DOI: , 2021)
15.
Anu
Priya
,
Shruti
Garg
,
Neha Prerna
Tigga
,
Predicting Anxiety, Depression and Stress in Modern Life using Machine Learning Algorithms
(
Procedia Computer Science
, Volume
167
, ISSN 1877-0509, ,
2020
),pp.
1258
-
1267
This content is only available via PDF.
You do not currently have access to this content.