Artificial Intelligence is taking people’s breath away with its capabilities. It’s already a part of daily life in multiple ways, changing things both upfront and in the background. One aspect of life it’s set to bring in a revolution in healthcare. AI is transforming healthcare’s many aspects, from data analysis to automating the operations of many medical tools. One of the biggest contributions of AI to the sector is analyzing medical images for various purposes.
From medical diagnosis to surgery, imaging plays a big role in keeping healthcare going. This is why with the advent of AI, healthcare institutions turned to medical image annotation to help create labeled images that can be used to train the required AI models. The quality of data annotation provided by experts, be they in-house or hired through an outsourcing agency, is crucial here as it determines the output quality.
But there are many problems associated with medical image annotation that is holding back full automation from becoming the norm in the sector. This blog details those challenges along with their possible solutions. We also look at the benefits gained if you opt to hire an expert by outsourcing image annotation services to third-party agencies. It is meant to help you improve your healthcare institution’s AI development and implementation.
Challenges Affecting Medical Image Annotation
Here are the challenges present in the medical image annotation process.
1. Lack of Standardization
One of the biggest challenges in medical image annotation is the lack of standardization. Different medical institutions use different medical imaging techniques and protocols, which can make it difficult to annotate medical images accurately. To overcome this challenge, you should establish standardization in medical imaging, which would allow for more consistent and accurate annotations across medical institutions.
2. Complexity of Medical Images
Medical images can be complex and difficult to interpret, making it challenging to accurately annotate them. For instance, in medical imaging, there are different modalities, such as MRI, CT, PET, and SPECT. Each modality has its unique features, and annotating them can be challenging. Furthermore, medical images can portray different types of abnormalities, which can further complicate the annotation process. This complexity also highlights the need for highly skilled medical experts who are trained in medical imaging techniques and can accurately annotate medical images.
3. Large Amounts of Data
Medical images can be extremely large in size, with some scans generating gigabytes of data. This large amount of data can make the annotation process extremely time-consuming and resource-intensive. It can also be challenging to store and manage this data effectively.
To address this challenge, there is a need for efficient and scalable annotation tools that can handle large amounts of data. You must also plan your IT infrastructure so that it can be easily scaled and managed as required. It is worthwhile to outsource your image annotation requirements in this scenario, as third-party agencies will have highly-skilled experts in large numbers who can perform annotation tasks within minimum timeframes.
4. Interobserver Variability
Another challenge in medical image annotation is interobserver variability. This refers to the differences in annotations provided by different medical experts, which can be a significant challenge in medical diagnosis and treatment planning. Resolving conflicting labels can be an arduous and prolonged process, as it may require contacting the first annotator, wherever they may be. The confusion may not even get resolved quickly, or at all, due to personal factors put across by annotators.
The solution to this is establishing clear annotation guidelines and protocols, as well as providing appropriate training to medical experts to ensure consistency in annotations.
5. Privacy and Security Concerns
Medical images contain sensitive patient information, which you must protect to ensure patient privacy and prevent data breaches. Therefore, you should choose medical image annotation platforms that are secure and comply with data protection regulations, such as the Health Insurance Portability and Accountability Act (HIPAA) in the United States. This can be a significant challenge, as medical images are often stored and accessed by multiple stakeholders, including medical professionals, researchers, and IT personnel.
6. High Costs
Medical image annotation can be costly, as it requires specialized equipment, software, and highly-skilled personnel. This cost can prove to be a significant challenge, especially for smaller medical institutions or those in low-income countries. You can address this challenge by opting for more affordable and accessible annotation tools, as well as training programs to develop the skills of in-house experts in medical image annotation. Costs can also be managed if excess expenses occurring in the institute’s different operations are curtailed and redirected toward annotation.
7. Operational Mismanagement
This problem most likely affects those who prefer getting the annotation tasks done in-house instead of seeking assistance from external data annotation service providers. A dedicated medical institution works in an industry that’s far-fetched from annotation, which comes under the purview of IT. While there may be some overlap due to medical data management functions, there is a vast difference between the two.
This difference makes it hard for you to establish a successful operational framework that works for your in-house image annotation. There may be reshuffling of personnel across teams, and the consequent rescheduling of their tasks can lead to a disrupted workflow that isn’t conducive to making your image annotation project progress smoothly. At its worst, the high resource demand for annotation may result in complete operational mismanagement.
8. Time Constraints
Medical professionals are often pressed for time, and medical image annotation can be time-consuming, meaning they aren’t available for the annotation process to provide crucial input. Furthermore, some medical conditions require urgent diagnosis and treatment, making it challenging to allocate the necessary time for medical image annotation. This challenge can be addressed with more efficient annotation tools that can automate some of the annotation processes, reducing the participation time of medical professionals.
9. Lack of Training Data
The lack of appropriately labeled data is a significant challenge in medical image annotation. Training data is used to provide input to machine learning algorithms so that medical images can be accurately annotated. However, medical images for labeling purposes can be challenging to obtain due to privacy concerns and the complexity of medical imaging.
Medical images contain sensitive patient information, and strict regulations govern the collection and use of medical data. As a result, obtaining a large and diverse dataset of medical images can be difficult. Furthermore, medical imaging techniques are expensive, and medical institutions may not have access to the necessary equipment or expertise to generate high-quality medical images.
Even when medical images are available, they may not be labeled or annotated, making it challenging to use them for training machine learning models. Medical experts are needed to annotate medical images accurately, and this can be time-consuming and expensive.
Moreover, medical images can be complex with different medical conditions presented in unique ways, making it challenging to obtain a diverse set of training data that accurately represents the full range of medical conditions. This can result in biased or incomplete training data, which can impact the accuracy and robustness of machine-learning models.
To overcome this challenge, you can go with more accessible and diverse training data for medical image annotation. This can be achieved through collaborations between medical institutions and data-sharing initiatives that prioritize patient privacy and data security. Furthermore, advances in artificial intelligence (AI) and computer vision techniques can help by generating synthetic medical images and annotations.
How Outsourcing Medical Image Annotation Is Beneficial?
As important as medical image annotation for your medical institution may be, it’s best not to pursue the process in-house. The complexity and resource demand it puts will require you to dedicate an entire department to it, pushing your budget extensively. There is no guarantee of good returns either as you won’t be experienced in managing such a process.
Thus, it’s best to outsource image annotation services for your medical image annotation needs to a dedicated agency. Outsourcing the medical image annotation task can provide you with the following benefits:
- Cost Reduction
One way to reduce the costs associated with annotation is to get the image annotation process performed by an external data annotation services agency. The economies of scale and currency exchange value benefits (if the agency is in a developing country) can save you a lot of money without compromising on the quality of work. Plus, you don’t have to worry about training, personnel management, equipment, and other miscellaneous costs, further saving you money. - Compliance Guarantee
Experts at a data annotation company constantly update themselves with the latest regulatory demands related to the field. They can, therefore, ensure that your annotated images are not out of line with the latest medical standards. - Data Privacy and Security
A dedicated data annotation services agency will protect your data and privacy since such agencies have strict operational protocols implemented to prevent any associated problems. Their compliance framework with medical data protection rules like HIPAA also helps here, besides their implementation of industry-best data and privacy protection solutions. - Quick Turnaround Times
The complexity of medical image annotation can delay the completion time of the project. But with the expertise and experience of data annotation experts at an outsourcing agency, coiled with the right equipment and operational procedures, the same project can be completed on schedule.
If the agency has branches in different time zones, then the annotation can occur continuously without end-of-day stoppage. This means your time to market in implementing the required AI models gets shortened, aiding your competitiveness and helping your patients receive on-time treatment. - Instant Access to Experts
The searching for and hiring of medical image annotation experts can take time, during which you’ll be losing money as well. You can skip that queue if you outsource image annotation services to a dedicated agency. They will have as many experts as needed at hand, preventing delays in your project’s commencement.
Such quick access at your project’s beginning also helps you to use those experts as guides to determine the best way to progress the project. Their experience and skill sets can make up for the lack of same at your end, leading to possibly better-than-expected outcomes.
Conclusion
The healthcare sector continues to make progress that can help treat patients better and improve institutions’ business prospects simultaneously. The adoption of automation is one major way to do it, with image analysis AI helping to solve many of the sector’s problems. With the right data annotation experts working on your image annotation project, your healthcare institution too can benefit from the technology, adding value to your medical image data. If you lack in-house annotation experts, the best way to overcome medical image annotation challenges would be by seeking the assistance of experts from a dedicated data annotation outsourcing agency.