Model Description: 

A Bayesian model to predict the number of maternal deaths. This models takes into consideration the Janani Suraksha Yojana scheme and its benefits while predicting Maternal Deaths. It also considers other parameters like number of hospitals, ambulances, etc. Dependency relationships between the nodes are established from government reports and published literature.

Node / Attribute:  

The above model is based on the following nodes. The color scheme used represents the type of node/attribute. (Purple – Independent node; Orange – Dependent node; Red – Target node)

Node / AttributeDescriptionData Source
Estimated Total Pregnancies Estimated number of pregnant womenKAG 2020-21
Number of Beneficiaries Availed Janani Suraksha Yojana (JSY) Number of women enrolled under the schemeKAG 2020-21
Number of Primary Health Centers compliant with Indian Public Health Standards Number of Primary Health Centers compliant with Indian Public Health Standards KAG 2020-21
Number of pregnant women registered for antenatal care (ANC) Number of pregnant women registered for antenatal care (ANC) KAG 2020-21
Number of women registered for ANC within 1st trimesterNumber of women registered for ANC within 1st trimesterKAG 2020-21
Number of Home Deliveries attended by Skilled Birth Attendants (SBA) Number of Home Deliveries attended by Skilled Birth Attendants (SBA) KAG 2020-21
Number of Ayush Hospitals Number of Ayush Hospitals KAG 2020-21
Number of Ambulances Number of Ambulances KAG 2020-21
Number of institutional deliveries No. of pregnant women delivering in a hospitalKAG 2020-21
Number of deliveries at home No. of pregnant women delivering at homeKAG 2020-21
Number of Beneficiaries who received the Madilu kit Number of Beneficiaries who received the Madilu kit KAG 2020-21
Maternal Mortality Rate (Target Variable)Number of prenatal/postnatal deaths happenedKAG 2020-21
Node Description Table
Intervention Modeling

It sets the network variables to specific levels, to track the changes in the target variable in the network. For instance: If we fix the value of the variable ‘Number of Beneficiaries availed Janani Suraksha Yojana_1338’ to ‘high’, then we would study the impact of this intervention on the target variable i.e., “Maternal Deaths” of the network across varieties of Taluks in Karnataka.

Intervention CodeIntervening NodeDescriptionEase of Intervention
[1-most difficult, 5-easy]
Total Models RelatedRelated Models Domains Data Stories impacted upon intervention
I1Number of Beneficiaries availed Janani Suraksha YojanaPromoting the JSY scheme in order to be able to give more medical care to Pregnant Women will reduce the number of maternal deaths. Beneficiaries can be increased by spending more resources on deploying more ASHA workers and spreading awareness amongst the general public.341. Child Malnutrition
2. Child Stunting
3. Child Wasting
4. Severe Anemia in Pregnant Women
Health

1. Predicted Change In Maternal Deaths After Making Number Of Beneficiaries Under JSY to be high.

2. Maternal Mortality Rate story post intervention including Stress Modelling
I2Number of Primary Health Centers(PHC) compliant with Indian Public Health StandardsIncreasing the number of PHCs to boost the reach of medical services to more women341. Child Malnutrition
2. Child Stunting
3. Child Wasting
4. Severe Anemia in Pregnant Women
Health 1. Predicted Change In Maternal Deaths After Making number of PHC’s to be High
I3Number of ANC Health checkups undergone by Pregnant WomenIntervention to check if all pregnant women have undergone a maximum of 4 ANC checkups 4Health
I4Number Of Aayush HospitalsIncreasing the number of Aayush hospitals will provide easier access to medical resources for pregnant women. Also as the number of hospitals increases, due to immediate medical attention available in case of any complication during pregnancy maternal deaths will go down.231. Child Stunting
2. Child Wasting
3. Severe Anemia in Pregnant Women
Health
I5Number of AmbulancesWith an increase in the number of ambulances, pregnant women’s transport to the nearest hospital/medical clinic is made easier. This facilitates immediate medical attention available in case of any complication during pregnancy and will help maternal deaths go down.421. Child Stunting
2. Child Wasting
Health
I6Number of women registered for ANC within 1st trimesterAs more and more women register for ANC in the first trimester, medical care and attention can be given from the beginning. With help of regular tests, any problems can be perceived in the earlier stages only and can be cured.41
1. Severe Anemia in Pregnant Women
Health
I7No. of institutional deliveries_1350By promoting institutional deliveries through schemes and ads not limited to but including JSY we can aim at educating women on child nourishment and the care to be taken to ensure nourishment through counseling by doctors and professionals at the hospitals.441. Maternal Deaths
2. Child Malnutrition
3. Child Stunting
4. Child Wasting
Health
Intervention Modeling Table

Variable Correlation Matrix : 

5 
corr 
ternal Death during 2020-21_1340 
. of Beneficiaries availed Janani Suraksha Yojana during 2020-21_1338 
otal no. of pregnant vvomen registered for antenatal care _ 1342 
. ofinsttubonal deliveries 1350 
Number of vvomen registered for ANC within 1st trimester _ 1343 
No of Primary Health Centres compliant to Indian Public Health Standards_1282 
Number of Ayush Hospitals_1283 
No of Ambulances 1334 
Number of Home Deliveries attended by Skilled Birth Attendants (SEA) _1352 
. of deliveries at home 1351 
No of Beneficiaries received Madilu kit during 2020-21_1339

DISCLAIMER: AI predictive models are meant to support and augment expert decision-making, and not a replacement for the same. It is important for AI model predictions to be vetted by domain experts before committing to action