DEV Community

Cover image for Deep learning in Healthcare and telemedicine field
Adamo Software
Adamo Software

Posted on • Updated on

Deep learning in Healthcare and telemedicine field

Deep learning has been an increasingly popular research direction, reforming modern performances such as object recognition, images, and machine translation. In the world of savvy-tech, data-driven machine health monitoring is more common owing to the widespread use of low-cost sensors.

Deep learning provides useful tools for processing and analyzing data, especially in the healthcare and medical fields. This article gives you definitions, benefits, and applications of deep learning in healthcare such as computer vision, natural language process, etc. In addition, it discusses some new trends of DL-based healthcare that might boom in the upcoming years.

Deep learning in healthcare: Definition & Examples

What is deep learning in healthcare contexts?

Deep learning, a subfield of machine learning, has experienced a dramatic emergence in the past few years. The increasing uses of computational power and the availability of massive databases have driven the demand for deep learning. Healthcare and medical fields have witnessed striking advances in the ability to analyze data such as images, language, and speech. The healthcare industry stands to benefit from deep learning due to data, the increasing proliferation of medical devices, and digital records.

Deep-learning models will scale to large datasets and continue improving with more data. This deep learning system can accept or read multiple data types as its input. For example, the most common deep learning models use supervised learning in which datasets are data points. Thus, many healthcare software development firms apply deep learning in healthcare to handle a large number of datasets.

Examples of deep learning in healthcare and medical aspects

Genomics

As an example of deep learning in healthcare aspects, Genomics uses deep learning techniques to help patients undergoing treatment. Professional clinical get an idea that might affect patient treatments in the future. Genomics is a steadily growing aspect. This deep learning technique supports clinical practice to give more accurate diagnoses.

Cell scope

Cell scope is one of the most effective examples of deep learning in healthcare. Thanks to deep learning in healthcare, helping parents monitor the health conditions or health status of their kids. People can see these deep learning techniques on any device, reducing the visits of parents to hospitals.

Insurance fraud

Insurance fraud is another example of deep learning in healthcare, which is used for medical insurance claim fraud. This deep learning technique is considered as predictive analysis which predicts possible fraud claims. Besides, deep learning also helps the insurance industry to send discounts or offers to target patients.

Medical imaging

Medical imaging is another example of deep learning in healthcare with healthcare software development such as CT scan, ECG, MRI, etc. This technique helps define and diagnose diseases for patients such as heart attacks, cancer, brain tumor, etc. Thus, deep learning in healthcare supports doctors to analyze patients’ diseases and give them useful advice.

Discovery drug

Deep learning in healthcare helps to discover drugs and develop them. Thanks to deep learning in healthcare, we gain insights from patients' tests and disease-related symptoms. Therefore, discovering drugs is one of the examples of deep learning in healthcare.

Alzheimer’s disease

One of the most crucial challenges people are facing is Alzheimer’s disease, especially the elders. So deep learning in healthcare helps detect Alzheimer’s disease at its initial phase, making it convenient for doctors to treat.

Benefits of deep learning in the medical field

To define how deep learning can benefit people in healthcare and medical aspects, let’s look into the healthcare treatments. So people apply deep learning in healthcare to assist professionals in the medical sciences and lab technicians. Here are a few benefits of deep learning in healthcare that you might know:

  • Deep learning in healthcare can be a learning tool collecting data and recording information about patients, their symptoms, and treatments. Doctors or professionals in the medical field can use this information as a future preference for the patients’ treatments.
  • Deep learning in healthcare allows you to create a model based on data sources available when you require a risk score on administration. Furthermore, healthcare software development firms apply deep learning techniques in healthcare to provide accurate and timely risk scores. That boosts confidence and appropriately allocates the resources.
  • When using deep learning in healthcare, people can reduce costs and get improved outcomes. For example, electronic health records (EHR) and digital healthcare applications can make data more accessible to trained algorithms than ever.
  • Thanks to deep learning in healthcare, health staff give more accurate and faster diagnostics during patient treatments. Doctors can identify patterns by connecting custom healthcare software. For instance, deep learning in healthcare can determine whether the skin lesions are cancerous or not like any certificated dermatologists.

Top applications of deep learning in healthcare

Computer vision: One of the largest successes of deep learning in healthcare

Computer vision emphasizes images and videos and handles tasks such as object classification, segmentation, and detection. This deep learning technique is useful in determining whether patients’ radiograph contains malignant tumors.

Medical imaging, for example, can benefit from advances in object classification and image detection. Many studies have proved the results in complicated diagnostics spanning dermatology, radiology, and pathology. Furthermore, deep learning in healthcare could support physicians by giving second opinions and providing concerning areas in images.

Remarkably, the models of deep learning in healthcare have obtained physician-level accuracy at a variety of diagnostic tasks. Thanks to the custom healthcare software, people can identify moles from melanomas, diabetic retinopathy, cardiovascular risk, and spinal analysis with magnetic resonance imaging.

Natural language processing

Natural language processing is one of the top applications of deep learning in healthcare. This application of deep learning in the medical field focuses on analyzing text and speech to infer meaning from words. When developing custom healthcare software, software engineers use deep learning algorithms to process inputs such as language, speech, and time-series data.

Significant successes of natural language processing include machine translation, image captioning, and text creation. In terms of the healthcare industry, sequential deep learning and healthcare languages benefit electronic health records (EHR). For example, a hospital typically generates about 150,000 pieces of data. With such a huge amount of data, the applications of deep learning in healthcare can solve many problems.

Reinforcement learning

As one of the most successful applications of deep learning in healthcare, reinforcement learning is a technique to train computational agents. This reinforcement learning can happen through trial and error, demonstration, or a hybrid method. Healthcare software development firms use reinforcement learning in which health fields accomplish better goals through learning expert demonstration. People can learn to predict the expert’s actions through imitation or by inferring the experts’ objectives.

Another healthcare domain that can benefit from deep reinforcement learning is robotic-assisted surgery (RAS). Deep learning can promote the robustness of RAS by using computer vision models to adapt to surgical environments and learn from physical motions.

Generalized deep learning

Beyond computer vision, natural language processing, etc, generalized deep learning is adaptable to healthcare domains where data requires customized processes. More specifically, modern genomic technologies collect various measurements of proteins in their blood.

Thus, deep learning in healthcare can use these data to analyze these measures, so it helps to provide more accurate treatments and diagnosis. Moreover, deep learning can further boost additional modalities such as medical images, and wearable device data.

Future of deep learning: A ray of hope for medical and health fields

The future of deep learning in healthcare has never been more promising. Artificial Intelligence and Machine Learning not only bring such a precious opportunity to develop custom healthcare software meeting specific needs. Moreover, deep learning in healthcare is beneficial for supporting clinical and patient care.

High-dimensional bio-medical information remains a challenging issue in shaping the healthcare industry. Different types of data are rising in the world of medical sciences such as images, sensor text, sensor data, etc. Healthcare software development firms use deep learning algorithms to solve this problem. Deep learning in healthcare makes unstructured data more successful representations. The latest application of deep learning in healthcare provides efficient paradigms to get the end-to-end learning models for complex data.

The use of electronic health records (EHR) helps advance clinical research and better decisions made during patient treatments. This custom healthcare software prevents the practice of learning models by synthesizing and demonstrating the data. Deep learning in healthcare can support and even affect decision-making processes in the clinical environment.

Deep learning is a set of many computational methods allowing an algorithm to demonstrate desired outcomes. The massive applications of deep learning in healthcare have brought many opportunities for the future of deep learning. For example, there is a further assessment and validation of medical images.

Healthcare software development services have used deep learning to train algorithms with feasible outcomes and measures. The algorithms in detecting reference diabetic retinopathy (RDRs) can be moderate. So the deep learning in healthcare-trained algorithms evaluates two operating points selected from high specificity and high sensitivity. That leads to better results. Thus, the future of deep learning in healthcare can be a ray of hope for the medical and healthcare industry.

Al and deep learning in healthcare: New trends of deep learning-based healthcare

Artificial Intelligence and deep learning in healthcare have boosted the healthcare and medical industry with emerging trends. The deep learning algorithm is convolutional networks. It helps analyze medical images, medical classification, segmentation, and other tasks. People use deep learning in healthcare areas such as retinal, digital pathology, and neural. Healthcare software development services see deep learning as an emerging trend in the field of data analysis. These deep learning algorithms have been named one of the 10 breakthrough technological applications in 2013.

Another trend of deep learning in healthcare that you might know is its application in healthcare predictions. People usually use deep learning algorithms in custom healthcare software to improve clinical predictions. Therefore, deep learning is an essential machine learning tool in imaging, neural networks, computer vision, etc.

Health informatics is also an emerging trend of deep learning in healthcare. Thanks to the applications of deep learning in healthcare, professional clinical doctors make predictions of disease to provide personalized services. Biomedical data in the healthcare industry has obtained knowledge from many applications of deep learning in healthcare based on techniques.

The healthcare field nowadays has various strategies which benefit individuals and societies owing to their spectrums. We have experienced advancements in Machine Learning and Artificial Intelligence in numerous fields so does deep learning in healthcare. Thus, deep learning in healthcare has emerged in recent years. A large number of data sets from clinical management systems feature the demand for healthcare services. This provides an opportunity for the application of deep learning in healthcare.

Closing

Deep learning is an element of machine learning, based on data learning methodologies. People use deep learning in healthcare such as recognizing speech, computer vision, natural language processing, etc. That has led to changes in the healthcare and medical fields. Besides, it helps boost the development of the healthcare industry. Healthcare software development services use deep learning algorithms to help doctors give more accurate diagnoses.

Top comments (0)