Submitted
Health in Fragile Contexts Challenge

NiADA (Non-invasive Anemia Detection App)

Team Leader
Mou Nandi
Solution Overview & Team Lead Details
Our Organization
Future Data LLC.
What is the name of your solution?
NiADA (Non-invasive Anemia Detection App)
Provide a one-line summary of your solution.
Non-invasive Anemia Detection App (NiADA) is a point-of-care, real-time smart-phone app that uses Artificial Intelligence to detect Anemia(low hemoglobin level in blood) from the inner eye lid photo and helps to monitor and manage nutritional supplement intake with respect to Anemia severity.
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What specific problem are you solving?

Anaemia is a leading contributor to global burden of disease that particularly affects young children, menstruating adolescent girls and women, and pregnant and postpartum women. WHO estimates that 269 million or 40% of children of 6–59 months of age, 37% of pregnant women, and 571 million or 30% of women 15–49 years of age worldwide are anemic.

Iron deficiency Anemia (IDA) counts for more than half of all Anemia cases around the world. Anemia is a silent killer as the symptoms of this disease are non-specific including fatigue, dizziness, and lack of concentration.

Failure to detect and control Anemia affects physical and cognitive development and obesity in generations of children, causes repeat emergency visits and premature death, increases risk of premature delivery, low birth weight of the babies and perinatal and maternal mortality, leaves millions of women with poor health and quality of life and causes economic harm. One study estimates the economic cost of IDA is 4.05% of global GDP.

In India, ranking 170 among 180 countries, 187 million women of reproductive age, 7.6 million of pregnant women and 62 million of children below 5 years are anemic. Anemia Mukt Bharat is a govt program which was established in 2018 to actively address Anemia prevalence.  Indian National Family Health Survey, 2021, reports that Anemia prevalence has increased significantly since then.

In United States, a report published in June 2022, US Department of Health and Human services/Centers for Disease Control and Prevention(CDC) shows that prevalence of anemia increased 13% between 2008 and 2018 among participants of The Special Supplemental Nutrition Program for Women, Infants, and Children (WIC) across USA. Anemia, among Black pregnant women, was classified as a moderate public health problem (20.0%–39.9%).

And yet, routine surveillance of Anemia is staggeringly limited. All these initiatives face and report the challenge of measurement and missing data to effectively monitor Anemia presence and distributing nutritional supplements accordingly among a target group.   

Currently, diagnosis of Anemia is mostly done using CBC (Complete Blood Count) tests, which:

  • Is Invasive, blood needs to be drawn.  
  • Requires a special lab setup and skilled technicians which are not available in suburban or remote areas anywhere in the world.
  • Is challenging to conduct frequently on children and infants.
  • Is time-consuming and often expensive for lower-income communities and daily-wagers.

In recent years there has been very limited use of Hemoglobinometers to help detect Anemia as a point-of-care solution, but it remains an invasive procedure and most importantly its accuracy is still inconclusive.

We, the members of Future Data team, embarked into the journey of building NiADA (Non-invasive Anemia Detection App) because of recent personal experiences with chronic undiagnosed Anemia among our female friends. As we started exploring the options for combatting Anemia personally, it was clear to us how common and yet under-informed, precarious and yet under-financed the problem is. This problem requires a novel non-invasive solution that is easy-to-use, accessible and scalable for a large target group . 

What is your solution?

We present NiADA, a non-invasive, easy-to-use, real-time and scalable solution to detect and monitor Anemia efficiently and accurately. 

The solution is built upon the successful marriage between two main components.  The user facing app, NiADA and the data platform, the backbone, Andromeda.

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The user facing solution, NiADA, is a smart phone app, built using react-native.  The app employs a three steps process to detect Anemia.

  1. User takes a photo or a selfie of a person’s inner eyelid.
  2. The system analyzes the image with Deep Convolutional Neural Network (CNN, a type of Artificial Intelligence) model.
  3. The system predicts hemoglobin level within seconds using our pre-built model, indicates the severity level as per WHO 
  4. The system stores the record in the history log for future trend analysis based on a time period, location , age groups , sex , pregnancy status 

NiADA can scale infinitely with the number of users and stores historical data.  History is currently used by the user or service providers and will be used for automated recommendation later, to manage nutritional supplement requirement and intake. NiADA can be used by any hospital urgent care, primary care health service providers, non-profit organizations who are part of Anemia eradication program to distribute nutrition supplement, at school health camps and by an individual at their home.

NiADA is supported by a solid data foundation, Andromeda, as the backbone and the core of the solution. This data platform is fed with regular eyelid images and mapping hemoglobin level from CBC test, from our partner hospitals daily. The steps for data collection, validation and model training are as follows.

  1. Our Data Collectors (humans) uses the data collection app, Andromeda, to collect images from consenting patients at hospital outdoor lab/indoor facilities.
  2. Upon collection, our MD, Pathologist cofounder, Dr. Jhuma Nandi, validates the images and mapping hemoglobin level to ensure data integrity. 
  3. Validated and approved new images are ingested into deep learning, AI model and a new model is deployed for NiADA to use, if testing for accuracy goes well.

Deep learning algorithms are already proven to be useful in diagnosis from medical images. These algorithms have a single necessary requirement for high quality and high amount of data, in this case inner eye images. Previous research and effort to produce a scalable application fall short in collecting and using enough data to be a viable solution in the market. 

Our team addressed this challenge since the beginning. 

  • As a first step, we onboarded high volume hospitals to create our selective data sourcer group.  
  • Currently, we are building a platform with a daily flow of about 200 inner eye lid image data from six hospitals in West Bengal, India 
  • Continuously validating our model in place, against the lab blood test result. 

Daily input from a vast population ensures that the model is trained on enough data that is well distributed in terms of patient’s age, gender and hemoglobin level. This data platform is the backbone and the heart of our solution, NiADA. 

Who does your solution serve, and in what ways will the solution impact their lives?

Iron Deficiency Anemia affects reproductive age women disproportionately. We plan to reach the affected women population first .

Due to our deeper connection in India and India ranking 170 out of 180 countries with Anemia problem , we are targeting Indian population first . 

Target population 1

We are working with schools in a few Indian cities and nearby areas to use NiADA on girls aged 15 to 19 to regularly monitor Anemia . 

During our primary market research (PMR) with school board members , much interest for buying NiADA was expressed . In last few years the condition has worsen among adolescent girls from lower and middle income families in both rural and urban areas. 

Anemia in the adolescence causes reduced physical and mental capacity and diminished concentration in work and educational performance, and also poses a major threat to future safe motherhood in girls- NIH states.

NiADA would help measure and monitor presence of Anemia onsite , at school health camp with instant result and help distribute proper nutritional supplement as needed , instead of blind distribution.

Target population 2

Rural and suburban reproductive age women 

We have done PMR with the National direct and head of two NGOs who are member of Anemia Mukt Bharat forum and provide training among women to grow iron , folic acid , B12 reach food. They were very interested in NiADA as it is non-invasive , NGO workers will be able to use it onsite and detect presence of Anemia on the spot to motivate the women to plan for better nutrition. 

Currently monitoring Anemia is a hassle as travelling to lab for blood test means losing a day of work and NiADA can save that.

Anemia leaves millions of women with poor health and quality of life and nations to lost economic productivity and development and NiADA can help mitigate that by early detection.

Target population 3

Pregnant women has increased need for iron and folic acid supplement. 

In pregnant women Anemia is associated with increased risk of premature delivery and low birth weight of the babies, perinatal and maternal mortality. 

Without easy surveillance mechanism for Anemia detection and monitoring , govt programs ( like WIC by CDC in USA and in India through Asha program ) complain that it is hard to manage the disease. NiADA can provide an easy and real time surveillance mechanism.

Target population 4

NIADA can be used for Children under 5 are served through primary care centers at rural areas . NiADA being non-invasive will be very useful for testing Anemia in little children.

Failure of control Anemia affects physical and cognitive development and obesity in generations of children.

Target population 5 

Senior citizens and chronic disease patients can use NiADA to test and monitor Anemia easily at home or at senior care centers , which can reduce repeat visits to ER and primary care centers and also untimely death , Anemia being the primary diagnosis.

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How are you and your team well-positioned to deliver this solution?
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The journey started with a few personal incidents for me, Mou, one of the cofounders at Future Data.

Two of my closest childhood friends, in India, were diagnosed with severe and life-threatening Anemia. They were living with it for months and attributed their tiredness and low energy to everyday workload. It only took one to fall asleep on the car wheel and a fever that made her completely unable to move and then admitted to hospital special care unit for plasma injection and the other to preoperative testing for a tumor only to postpone the operation and learn Anemia was killing them silently.

These incidents took me by surprise and hopelessness as it hit close to home. More I talked to my other friends; it shows almost all my female friends either are living with Anemia with occasional spike in severity or had Anemia during their pregnancy. In addition to talking to our friends , we started a google survey among our extended friend circles to gather feedback from women of reproductive age in both India and USA.

Anecdotally and statistically, two out of three women are living with severe Anemia and there was nothing available for us to measure and monitor it until we visit the doctor’s office. So, we stall it as long as we can.

I started reading anything I could find on Anemia to understand if something can be done to make Anemia detection more commonplace and easier. There are plenty of resources online and research in medical journals focusing on studies on Anemia prevalence including WHO website. Interestingly, some articles explained that inner eyelid paleness is the most reliable indicator for doctors to suspect Anemia, before conducting a CBC blood test to confirm. This sounded to me like a classic case for using deep learning for reading and analyzing images and predicting hemoglobin level.

Next step was to run a proof of concept with my two cofounders . We bought 218 inner eye lid images that were available at IEEE  to run the POC. The POC revealed that we must build a platform to source eyelid images regularly, with lab tested CBC generated hemoglobin level to train the model. Previous research works were never productized at scale due to this operational difficulty of collecting enough and diversified data for generalization of the model.

With our ties to medical community in India and our ties into tech world as the alumni of prestigious Jadavpur University, we were able to build a software platform and a data collector team within two months to support a daily flow of 200 eye images from six hospitals. We continue to expand our network of data sourcer hospitals to build a diverse source pool and working on partnering up with local hospital chains like Intermountain Health in Utah.

We connected with a few NGOs and schools’ boards in India through our friends who are actively working on Anemia eradication program and eagerly waiting for NIADA to pilot at their organizations.

Which dimension of the Challenge does your solution most closely address?
  • Improve accessibility and quality of health services for underserved groups in fragile contexts around the world (such as refugees and other displaced people, women and children, older adults, LGBTQ+ individuals, etc.)
In what city, town, or region is your solution team headquartered?
Lehi, Utah, USA
In what country is your solution team headquartered?
  • United States
What is your solution’s stage of development?
  • Prototype: A venture or organization building and testing its product, service, or business model, but which is not yet serving anyone
Please share details about what makes your solution a Prototype rather than a Concept.

Our solution has graduated from a concept to prototype in the last two months . The timeline below charts our journey for last 4 and half months.

1. Conception  - Dec 16th, 2022

We started brainstorming on the concept on December 16th, 2022, as I received the news of severe Anemia postponing a required tumor operation for my friend. 

2. Start of POC - January, 2023

We started working on the proof-of-concept in early January 2023 when we got hold of about 218 inner eyelid images available on IEEE data site for the paper1. At this point, we can prove that deep learning algorithm trained on inner eye lid images can detect the blood hemoglobin level with more than 90% accuracy. 

3. Primary Market research -February, 2023

We have done our PMR among the following potential customer categories. 

  • School Board members in India
  • NGO National Directors in India 
  • Hospital administration heads in India and Utah
  • Owner of Day care centers in NY
  • Doctors at pediatric center in Utah
  • Adult women with smart phone globally

At this point we were ready to build our prototype and needed more data to scale and generalize the model. This required putting together a regular operation department and signing & onboarding of hospitals to let us collect data from the hospital lab and outdoor. We currently have six hospitals that have joined our Data Sourcer group.

4. Starting Data Collection ops – Andromeda(Data Collection Platform)  goes live - 3rd week of March, 2023

We launched this Andromeda, the data platform app, in the field in the third week of March 2023 and hired nine data collectors to use the App every day .

The data collection app is used by the data collectors and three administrators to create a regulars supply of valid eyelid images from the hospital lab . 

We now run a streamlined operation for 

  • collecting eye image data first day 
  • collecting and uploading the CBC result report next day
  • mapping the matching tested hemoglobin level the next day for each patient 
  • validating the data quality before ingesting into model required the data platform

Andromeda is designed and built to work smoothly, with and without internet and with an option to upload images when internet is available. 

5. Building Model V1 - End of April, 2023

As the new data is now coming into our data platform, the model is being tested on the new data that has not yet received lab result. The model is used in the backend API to predict the hemoglobin value and stored it in the data platform . The next day when the lab results are in , model accuracy is calculated and the model is updated as needed. 

An automated data pipeline runs from data collection to model building and publishing that model to be used by NiADA . Our v1 model already shows promising result for hemoglobin level prediction.

In the month of May 2023, we are all set to test the model on 3000 to 4000 patients and continuously improve it.

6. NiADA – V1 launched - May 7th, 2023

We start testing on on-demand eye lid images by friend and family using Model V1. 

The first release of NiADA uses the v1 model to predict the hemoglobin value in real time as the user takes a picture of their patient and we use this feedback to further improve the model.

NiADA v1 is also being tested for the optimal design of the camera inside the app to minimize the noise introduced by common users.

How many people does your solution currently serve?

The product , NiADA is in prototype stage and yet to serve any real user.

While our data platform solution is in production for last two months and collecting data using the app, the prediction model is in testing as we collect data from patients at the hospitals.

We plan to go through NiADA testing phase for another month before it pilots in a few schools and private primary care centers.

In the month of May, 2023 , 

  • NiADA will be tested on new 3000 to 4000 patients ( projected based on daily data collection volume ) 
Why are you applying to Solve?

We are hoping to get access to MIT's network to

  1. be part of a diverse and vibrant network for any help building effective GTM strategy for global market.
  2. be part of an innovative peer group where we can participate in meaningful exchange for improving the solution .
  3. be able to attract exceptional and passionate talent to work with us.
  4. get us some regulatory help for the process of registering our App as SaMD(Software As Medical Device) in FDA classified list, this classification is quite new, so that it could be comparatively easier to introduce in North American market.
  5. connect ourselves to potential funding opportunities which are dedicated to solve women's health issue problem as Anemia is one.
  6. get funding for the pilot phase to get us to revenue generating stage


In which of the following areas do you most need partners or support?
  • Business Model (e.g. product-market fit, strategy & development)
  • Financial (e.g. accounting practices, pitching to investors)
  • Legal or Regulatory Matters
  • Product / Service Distribution (e.g. delivery, logistics, expanding client base)
  • Public Relations (e.g. branding/marketing strategy, social and global media)
Who is the Team Lead for your solution?
Mou Nandi
More About Your Solution
Your Team
Your Business Model & Funding
Solution Team:
Mou Nandi
Mou Nandi
Cofounder & CEO
Jhuma Nandi
Jhuma Nandi
krishanu banerjee
krishanu banerjee