Table 2.
ML in healthcare challenges | Description |
---|---|
Safety challenges |
Model’s prediction precision without expert intervention is questioned Identifying rare, underlying health problems is challenging Enabling ML techniques to identify subtly hidden cases is the key to ensuring safety |
Privacy challenges |
Preserving privacy can be challenging Patients expect their confidential information to be safeguarded Anonymization can prevent unauthorized access and privacy breach |
Ethical challenges |
Data accumulation requires authorization Preserving patients’ dignity while collecting data is to be taken care of If ethical concerns are not addressed, the unfavourable impact is seen in ML applications |
Availability of quality data |
The information available is heterogenous Data collected during practice have issues (bias, redundancy), produce an adverse effect in the algorithms High-quality practical data requires resources and service with good maintenance |
Casualty is Challenging |
Reasoning while taking decisions in crucial health problems is imminent Queries where expert reasoning is required cannot be answered from a medical data perspective Forming casual rationalization from data is challenging |
Updating hospital Infrastructure is inflexible |
Independent sections of healthcare avoid frequent information exchange For frictionless communication, antiquated systems need upgradation The difficulties in upgrading hospital infrastructure raise concern with modern-day healthcare practices using ML/DL |