| Literature DB >> 34807411 |
Tariq M Aslam1,2, David C Hoyle3.
Abstract
In coming decades, artificial intelligence (AI) platforms are expected to build on the profound achievements demonstrated in research papers towards implementation in real-world medicine. The implementation of AI systems is likely to be as an adjunct to clinicians rather than a replacement, but it still has the potential for a revolutionary impact on ophthalmology specifically and medicine in general in terms of addressing crucial scientific, socioeconomic and capacity challenges facing populations worldwide. In this paper we discuss the broad range of skills that clinicians should develop or refine to be able to fully embrace the opportunities that this technology will bring. We highlight the need for an awareness to identify AI systems that might already be in place and the need to be able to properly assess the utility of their outputs to correctly incorporate the AI system into clinical workflows. In a second section we discuss the need for clinicians to cultivate those human skills that are beyond the capabilities of the AI platforms and which should be just as important as ever. We describe the need for such an awareness by providing clinical examples of situations that might in the future arise in human interactions with machine algorithms. We also envisage a harmonious future in which an educated human and machine interaction can be optimised for the best possible patient experience and care.Entities:
Keywords: Artificial intelligence; Human skills; Machine learning; Ophthalmology
Year: 2021 PMID: 34807411 PMCID: PMC8770770 DOI: 10.1007/s40123-021-00430-6
Source DB: PubMed Journal: Ophthalmol Ther
Fig. 1Example receiver-operator-characteristic curve for test data that are consistent with the algorithm being used by our clinician in the example. Two different thresholds, or cutoffs, are highlighted. At each, we display the resultant data in a confusion matrix. The 80% (0.8) threshold cutoff provides the closest appropriate data relevant for the output of the algorithm used in our clinical scenario. FPR False positive rate, TPR true positive rate
Fig. 2Test-set confusion matrix for our artificial intelligence algorithm taken at a threshold of 80%. The overall accuracy in the test set is total correct predictions/total predictions. In this case, the total accuracy is (742 + 108)/1000 = 85%
| Artificial intelligence (AI) platforms are likely to increasingly penetrate to direct clinical care in upcoming years as an adjunct rather than replacement for human clinicians. |
| It is therefore incumbent on human clinicians to arm themselves with the knowledge and skills necessary to effectively interact with AI systems of the future. |
| This undertaking involves developing an understanding of the algorithms themselves, their strengths and weaknesses and the precise meaning of their outputs with relevance to individual clinical scenarios. |
| Human skills will remain critically important, and these skills should also be nurtured with respect to particular aspects of their importance in the AI-enabled clinics of the future. |