| Literature DB >> 35412463 |
Thomas Boillat1, Faisal A Nawaz2, Homero Rivas1.
Abstract
BACKGROUND: Similar to understanding how blood pressure is measured by a sphygmomanometer, physicians will soon have to understand how an artificial intelligence-based application has come to the conclusion that a patient has hypertension, diabetes, or cancer. Although there are an increasing number of use cases where artificial intelligence is or can be applied to improve medical outcomes, the extent to which medical doctors and students are ready to work and leverage this paradigm is unclear.Entities:
Keywords: artificial intelligence in medicine; health care; medical doctors; medical students; questionnaire
Year: 2022 PMID: 35412463 PMCID: PMC9044144 DOI: 10.2196/34973
Source DB: PubMed Journal: JMIR Med Educ ISSN: 2369-3762
Mean (SD) and P value for each factor.
| Factors | MDa, mean (SD) | MSb, mean (SD) | ||||||
|
| ||||||||
|
| 1.1 | AId | 3.1 (1.0) | 3.3 (1.0) | .24 | |||
|
| 1.2 | MLe | 2.7 (1.1) | 2.8 (1.2) | .46 | |||
|
| 1.3 | Supervised ML | 2.0 (1.2) | 2.1 (1.2) | .77 | |||
|
| 1.4 | Unsupervised ML | 1.9 (1.1) | 2.0 (1.2) | .87 | |||
|
| 1.5 | Deep learning | 2.2 (1.1) | 2.4 (1.2) | .18 | |||
|
| 1.6 | Neural networks | 2.2 (1.1) | 2.5 (1.2) | .14 | |||
|
| 1.7 | Fuzzy logic | 1.6 (0.9) | 1.5 (0.9) | .48 | |||
|
| 1.8 | Support vector machine | 1.5 (0.9) | 1.4 (0.8) | .37 | |||
|
| 1.9 | Overfitting or underfitting | 1.6 (1.1) | 1.5 (1.0) | .83 | |||
|
| 1.10 | Feature selection | 1.7 (1.1) | 1.8 (1.1) | .64 | |||
|
| ||||||||
|
| 2.1 | Last time an AIM course was attended | 1.4 (1.0) | 1.98 (1.5) | .006f | |||
|
| 2.2 | Better understand the main concepts of artificial intelligence | 4.0 (1.0) | 4.3 (0.8) | .08 | |||
|
| 2.3 | Explore the opportunities offered by artificial intelligence in general | 4.1 (1.1) | 4.2 (0.9) | .36 | |||
|
| 2.4 | Explore the opportunities offered by AIM and your field | 4.1 (1.1) | 4.3 (0.8) | .14 | |||
|
| 2.5 | Know more of existing commercial solutions | 3.8 (1.1) | 4.0 (0.9) | .23 | |||
|
| 2.6 | Create my own artificial intelligence algorithm or applications | 3.8 (1.1) | 3.7 (1.1) | .40 | |||
|
| ||||||||
|
| 3.1 | Outcomes of artificial intelligence algorithms are difficult to trace or understand (the black box syndrome) | 2.8 (1.7) | 2.9 (1.7) | .67 | |||
|
| 3.2 | The complexity of the field of medicine | 3.5 (1.5) | 3.8 (1.3) | .12 | |||
|
| 4.3 | The availability of high-quality data samples | 3.7 (1.4) | 3.3 (1.7) | .75 | |||
|
| 3.4 | The artificial intelligence’s level of autonomy (what artificial intelligence should and should not do) | 3.7 (1.4) | 3.7 (1.4) | .96 | |||
|
| 3.5 | The costs associated with the implementation of artificial intelligence | 3.4 (1.6) | 3.75 (1.4) | .16 | |||
|
| 3.6 | Data privacy or confidentiality | 3.7 (1.5) | 3.7 (1.5) | .79 | |||
|
| ||||||||
|
| 4.1 | The availability of comparison studies | 3.7 (1.4) | 3.3 (1.7) | .13 | |||
|
| 4.2 | The safe use of artificial intelligence | 3.9 (1.3) | 4.0 (1.4) | .93 | |||
|
| 4.3 | Build trust between humans and artificial intelligence | 3.7 (1.5) | 3.7 (1.5) | .88 | |||
|
| 4.4 | Availability of regulations and legislation | 3.7 (1.6) | 3.8 (1.6) | .75 | |||
|
| 4.5 | The top management’s level of understanding | 3.8 (1.5) | 3.6 (1.6) | .45 | |||
|
| ||||||||
|
| 5.1 | Dehumanization of health care | 3.3 (1.2) | 3.5 (1.1) | .12 | |||
|
| 5.2 | Reduction in physicians’ skills (eg, physicians might execute fewer types of tasks) | 3.3 (1.2) | 3.6 (1.0) | .03f | |||
|
| 5.3 | Artificial intelligence will eventually harm patients | 2.3 (0.9) | 2.8 (1.0) | <.001f | |||
|
| 5.4 | Physicians may become redundant | 2.6 (1.1) | 3.0 (1.1) | .008f | |||
aMD: medical doctor.
bMS: medical student.
cAIM: artificial intelligence in medicine.
dAI: artificial intelligence.
eML: machine learning.
fSignificant difference.
Participants’ demographics (N=207).
| Demographics | MDa, n (%) | MSb, n (%) | Total, n (%) | |
| Participants | 105 (50.1) | 102 (49.9) | 207 (100.0) | |
|
| ||||
|
| Men | 62 (59.1) | 43 (40.9) | 105 (50.1) |
|
| Women | 43 (42.1) | 59 (57.9) | 102 (49.9) |
|
| ||||
|
| <20 | 0 (0) | 19 (18.6) | 19 (9.2) |
|
| 20-29 | 18 (17.1) | 82 (80.4) | 100 (48.3) |
|
| 30-39 | 27 (25.7) | 1 (0.9) | 28 (13.3) |
|
| 40-49 | 26 (24.8) | 0 (0) | 26 (12.6) |
|
| 50-59 | 26 (24.8) | 0 (0) | 26 (12.6) |
|
| 60-69 | 8 (7.6) | 0 (0) | 8 (3.9) |
|
| >70 | 0 (0) | 0 (0) | 0 (0) |
|
| ||||
|
| Asia | 14 (13.3) | 19 (18.6) | 33 (15.9) |
|
| Africa | 4 (3.8) | 3 (2.9) | 7 (3.4) |
|
| Central America | 0 (0) | 0 (0) | 0 (0) |
|
| North America | 11 (10.5) | 10 (9.8) | 21 (10.1) |
|
| South America | 1 (0.9) | 0 (0) | 1 (0.5) |
|
| Europe | 29 (27.6) | 23 (22.6) | 52 (25.1) |
|
| Eastern Europe | 0 (0) | 1 (0.9) | 1 (0.5) |
|
| Middle East | 9 (8.6) | 42 (41.2) | 51 (24.6) |
|
| Oceania | 1 (0.9) | 2 (1.9) | 3 (1.4) |
|
| ||||
|
| Asia | 15 (14.3) | 24 (23.5) | 39 (18.8) |
|
| Africa | 1 (0.9) | 4 (3.9) | 5 (2.4) |
|
| Central America | 2 (1.9) | 0 (0) | 2 (0.9) |
|
| North America | 11 (10) | 9 (8) | 20 (9) |
|
| South America | 0 (0) | 0 (0) | 0 (0) |
|
| Europe | 15 (14.1) | 21 (20.6) | 36 (17.4) |
|
| Eastern Europe | 0 (0) | 1 (0.9) | 1 (0.5) |
|
| Middle East | 59 (56.2) | 41 (40.2) | 100 (48.3) |
|
| Oceania | 2 (1.9) | 2 (1.9) | 4 (1.9) |
aMD: medical doctor.
bMS: medical student.
Figure 1Familiarity with artificial intelligence in medicine (AIM)—comparison between medical doctor (MD) and medical student (MS; y-axis: means and SDs). ML: machine learning.
Figure 2Last time that medical doctor (MD) and medical student (MS) attended a course on artificial intelligence in medicine (AIM; y-axis: percentages).
Figure 3Reasons to attend a course on artificial intelligence in medicine (AIM)—comparison between medical doctor (MD) and medical student (MS; y-axis: means and SDs).
Figure 4Challenges to artificial intelligence in medicine’s (AIM) implementation—comparison between medical doctor (MD) and medical student (MS; y-axis: means and SDs).
Figure 5Barriers to artificial intelligence in medicine’s (AIM) implementation—comparison between medical doctor (MD) and medical student (MS; y-axis: means and SDs).
Figure 6Risks linked to artificial intelligence in medicine’s (AIM) implementation—comparison between medical doctor (MD) and medical student (MS; y-axis: means and SDs).
Figure 7Working with an artificial intelligence (AI) algorithm—results (y-axis: percentages).
Factors associated with AIMa risks (significance level P>.05).
| Associated factors | Estimate (SE; SD) | ||||||
|
| |||||||
|
| Familiarity with AIM | −0.28393 (0.09757; 1.146) | −2.91 (205) | .004b | |||
|
| Clinical experience | −0.08585 (0.0608; 1.164) | −1.415 (205) | .16 | |||
|
| |||||||
|
| Familiarity with AIM | −0.27568 (0.09252; 1.087) | −2.98 (205) | .003b | |||
|
| Clinical experience | −0.10175 (0.05743; 1.102) | −1.772 (205) | .08 | |||
|
| |||||||
|
| Familiarity with AIM | −0.0949 (0.08102; 0.952) | −1.171 (205) | .24 | |||
|
| Clinical experience | −0.12819 (0.04897; 0.940) | −2.618 (205) | .009b | |||
|
| |||||||
|
| Familiarity with AIM | −0.21163 (0.09575; 1.125) | −2.21 (205) | .28b | |||
|
| Clinical experience | −0.14515 (0.05846; 1.122) | −2.483 (205) | .01b | |||
aAIM: artificial intelligence in medicine.
bSignificant difference.