Use of Artificial Intelligence Chatbots in Interpretation of Clinical Chemistry and Laboratory Medicine Reports: A Standardized Approach
Abstract
:1. Introduction
2. Materials and Methods
2.1. Clinical Chemistry Analysis Reports
2.2. Prompts and Claude AI Chatbot
2.3. Interpretation Accuracy of Claude AI Chatbot
3. Results
3.1. AI ChatBot Interpretation of Complete Clinical Chemistry Analysis Report
3.1.1. Case #1: Diabetic Patient with Critical Glucose Levels (Figure S2)
- Key Findings:
- Critical hypoglycemia (55 mg/dL) ↓.
- HbA1c (8.2%) ↑.
- Dyslipidemia with total cholesterol (270 mg/dL) ↑.
- Creatinine (1.3 mg/dL) ↑.
- Ferritin (10 ng/mL) ↓.
- Potential Interpretation Pitfalls:
- Focusing solely on the critical glucose without noting the contradictory HbA1c.
- Overlooking the combined cardiovascular risk factors.
- Missing the relationship between elevated creatinine and diabetes management.
- AI ChatBot Interpretations:
3.1.2. Case #2a: Iron and Folate Deficiency
- Key Findings:
- Serum iron (27 mch/dL) ↓.
- Folic acid (2.4 ng/mL) ↓.
- Homocysteine (43 Umol/L) ↑.
- Vitamin D3 (24 ng/L) ↓.
- Potential Interpretation Pitfalls:
- Focusing on individual deficiencies without considering their interrelations.
- Overlooking cardiovascular risk from elevated homocysteine.
- Missing the potential underlying malabsorption syndrome.
- AI ChatBot Interpretations:
3.1.3. Case #2b: Follow-Up Analysis
- Key Findings:
- Hypochromic microcytic anemia.
- Serum iron (26.6 mch/dL) ↓ (persistent).
- Homocysteine (16.2 Umol/L) ↑.
- Potential Interpretation Pitfalls:
- Failing to connect with previous results.
- Missing the progression of anemia.
- Overlooking the persistent elevated homocysteine despite normal folate.
- AI ChatBot Interpretations:
3.1.4. Case #3: Complex Metabolic Profile
- Key Findings:
- Ferritin (424 ng/mL) ↑.
- Total cholesterol (233 mg/dL) ↑.
- Normal liver function tests.
- Urine pH ↓.
- Potential Interpretation Pitfalls:
- Missing the connection between elevated ferritin and potential inflammation.
- Overlooking the need for iron overload assessment.
- Failing to consider metabolic syndrome indicators.
- AI ChatBot Interpretations:
3.1.5. Case #4: Complex Metabolic Profile (Figure S3)
- Key Findings:
- WBC: 11.2 × 109/L ↑.
- RBC: 4.1 × 1012/L ↓.
- Hemoglobin: 11.8/dL ↓.
- Hematocrit: 35% ↓.
- BUN: 25 mg/dL ↑.
- Creatinine: 1.3 mg/dL ↑.
- eGFR: 58 mL/min ↓.
- Potential interpretation pitfalls:
- Missing the connection between kidney function and electrolytes.
- Missing mild anemia.
- AI ChatBot Interpretations:
3.1.6. Case #5: Complex Metabolic Profile (Figure S4)
- Key Findings:
- Endocrine profile and growth/development markers appropriate for age: prepubertal hormone levels, normal TSH and cortisol axis, normal ACTH, appropriate protein levels and electrophoresis, normal glucose metabolism, mild anemia requiring monitoring.
- Alpha-2 globulin 0.91 g/dL ↑.
- Potential Interpretation Pitfalls
- Age-Specific Considerations: reference ranges differ for pediatric patients, hormone levels vary by pubertal stage, growth velocity data missing.
- Clinical Context Gaps: growth chart data absent, pubertal staging unknown, family history unavailable.
- AI ChatBot Interpretation
3.1.7. Case #6 (Figure S5)
- Key Findings:
- WBC: 14.91 × 109/L ↑.
- Platelets: 93 × 109/L ↓.
- Neutrophils: 11.37 × 109/L ↑.
- Glucose: 55 mg/dL ↓.
- HbA1c: 8.2% ↑.
- Total Cholesterol: 270 mg/dL ↑.
- LDL: 180 mg/dL ↑.
- Triglycerides: 220 mg/dL ↑.
- AST: 41 U/L ↑.
- ALT: 66 U/L ↑.
- Ferritin: 10 ng/mL ↓.
- Potential Interpretation Pitfalls:
- Timing of glucose measurement unknown.
- Fasting status for lipids unknown.
- Platelet count may be affected by clumping.
- AI ChatBot Interpretations:
3.2. Patient Feedback
- Understanding Results:
- “The way complex medical terms were broken down made everything crystal clear. It’s like having a medical translator.”
- “I particularly appreciated how the AI explained the relationship between different test results. It helped me see the bigger picture.”
- “The explanations were detailed enough to be informative but simple enough that I didn’t need a medical degree to understand them.”
- Anxiety Reduction:
- “Understanding why my cholesterol was slightly elevated and what it meant in context helped me feel less worried.”
- “The explanations helped me understand that not every ‘abnormal’ result is cause for panic.”
- “Having clear explanations available immediately after seeing my results prevented me from spiraling into worst-case scenarios.”
- Doctor Consultations:
- “I felt more confident discussing my results with my doctor because I already had a basic understanding of what they meant.”
- “The explanations helped me formulate specific questions for my doctor instead of just general concerns.”
- “My consultation was more productive because I could focus on treatment options rather than just trying to understand the basics.”
4. Discussion
4.1. Future Implementation and Integration
- API-based integration: Laboratory information systems could connect to the AI service via secure API calls, automatically sending structured report data for interpretation and receiving explanations that could be appended to standard reports or made available through patient portals. This approach would require minimal modification to existing LIS architecture and could be implemented with industry-standard HL7 FHIR protocols.
- Middleware solution: For laboratories with legacy systems lacking API capabilities, a middleware layer could intercept report generation, process the data through the AI system, and reincorporate the interpretation before final delivery to patients or clinicians.
- Standalone patient-facing portal: As an alternative requiring no direct LIS integration, laboratories could offer a secure portal where patients upload their reports for interpretation, though this approach would place more burden on users and potentially introduce transcription errors.
4.2. Limitations
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
- Lee, P.; Bubeck, S.; Petro, J. Benefits, limits, and risks of GPT-4 as an AI chatbot for medicine. N. Engl. J. Med. 2023, 388, 1233–1239. [Google Scholar] [CrossRef] [PubMed]
- Herman, D.S.; Rhoads, D.D.; Schulz, W.L.; Durant, T.J.S. Artificial intelligence and mapping a new direction in laboratory medicine: A review. Clin. Chem. 2021, 67, 1466–1482. [Google Scholar] [CrossRef] [PubMed]
- Naugler, C.; Church, D.L. Automation and artificial intelligence in the clinical laboratory. Crit. Rev. Clin. Lab. Sci. 2019, 56, 98–110. [Google Scholar] [CrossRef] [PubMed]
- Zhang, Z.; Citardi, D.; Xing, A.; Luo, X.; Lu, Y.; He, Z. Patient challenges and needs in comprehending laboratory test results: Mixed methods study. J. Med. Internet Res. 2020, 22, e18725. [Google Scholar] [CrossRef] [PubMed]
- Yang, H.S.; Wang, F.; Greenblatt, M.B.; Huang, S.X.; Zhang, Y. AI Chatbots in Clinical Laboratory Medicine: Foundations and Trends. Clin. Chem. 2023, 69, 1238–1246. [Google Scholar] [CrossRef] [PubMed]
- Thirunavukarasu, A.J.; Ting, D.S.J.; Elangovan, K.; Gutierrez, L.; Tan, T.F.; Ting, D.S.W. Large language models in medicine. Nat. Med. 2023, 29, 1930–1940. [Google Scholar] [CrossRef] [PubMed]
- Zhavoronkov, A. Caution with AI-generated content in biomedicine. Nat. Med. 2023, 29, 532. [Google Scholar] [CrossRef] [PubMed]
- Steimetz, E.; Minkowitz, J.; Gabutan, E.C.; Ngichabe, J.; Attia, H.; Hershkop, M.; Ozay, F.; Hanna, M.G.; Gupta, R. Use of Artificial Intelligence Chatbots in Interpretation of Pathology Reports. JAMA Netw. Open 2024, 7, e2412767. [Google Scholar] [CrossRef] [PubMed]
- Cabitza, F.; Banfi, G. Machine learning in laboratory medicine: Waiting for the flood? Clin. Chem. Lab. Med. 2018, 56, 516–524. [Google Scholar] [CrossRef] [PubMed]
- Van Dis, E.A.M.; Bollen, J.; Zuidema, W.; van Rooij, R.; Bockting, C.L. ChatGPT: Five priorities for research. Nature 2023, 614, 224–226. [Google Scholar] [CrossRef] [PubMed]
- Pennestrì, F.; Banfi, G. Artificial intelligence in laboratory medicine: Fundamental ethical issues and normative key-points. Clin. Chem. Lab. Med. 2022, 60, 1867–1874. [Google Scholar] [CrossRef] [PubMed]
- Ali, S.R.; Dobbs, T.D.; Hutchings, H.A.; Whitaker, I.S. Using ChatGPT to write patient clinic letters. Lancet Digit. Health 2023, 5, e179–e181. [Google Scholar] [CrossRef] [PubMed]
- Ayers, J.W.; Poliak, A.; Dredze, M.; Leas, E.C.; Zhu, Z.; Kelley, J.B.; Faix, D.J.; Goodman, A.M.; Longhurst, C.A.; Hogarth, M.; et al. Comparing physician and artificial intelligence chatbot responses to patient questions posted to a public social media forum. JAMA Intern. Med. 2023, 183, 589–596. [Google Scholar] [CrossRef] [PubMed]
- Carobene, A.; Cabitza, F.; Bernardini, S.; Gopalan, R.; Lennerz, J.K.; Weir, C.; Cadamuro, J. Where is laboratory medicine headed in the next decade? Clin. Chem. Lab. Med. 2023, 61, 535–543. [Google Scholar] [CrossRef] [PubMed]
- Zhou, Q.; Qi, S.; Xiao, B.; Li, Q.; Sun, Z.; Li, L. Artificial intelligence empowers laboratory medicine in Industry 4.0. Nan Fang Yi Ke Da Xue Xue Bao 2020, 40, 287–296. [Google Scholar]
- Chen, S.; Kann, B.H.; Foote, M.B.; Aerts, H.J.W.L.; Savova, G.K.; Mak, R.H.; Bitterman, D.S. Use of artificial intelligence chatbots for cancer treatment information. JAMA Oncol. 2023, 9, 1459–1462. [Google Scholar] [CrossRef] [PubMed]
- Patel, S.B.; Lam, K. ChatGPT: The future of discharge summaries? Lancet Digit. Health 2023, 5, e107–e108. [Google Scholar] [CrossRef] [PubMed]
- Kung, T.H.; Cheatham, M.; Medenilla, A.; Sillos, C.; De Leon, L.; Elepaño, C.; Madriaga, M.; Aggabao, R.; Diaz-Candido, G.; Maningo, J.; et al. Performance of ChatGPT on USMLE: Potential for AI-assisted medical education using large language models. PLoS Digit. Health 2023, 2, e0000198. [Google Scholar] [CrossRef] [PubMed]
- Marks, M.; Haupt, C.E. AI chatbots, health privacy, and challenges to HIPAA compliance. JAMA 2023, 330, 309–310. [Google Scholar] [CrossRef] [PubMed]
- Munoz-Zuluaga, C.; Zhao, Z.; Wang, F.; Greenblatt, M.B.; Yang, H.S. Assessing the accuracy and clinical utility of ChatGPT in laboratory medicine. Clin. Chem. 2023, 69, 939–940. [Google Scholar] [CrossRef] [PubMed]
Case | Sex/Age | Lab Report Results (Out-of-Range Value) |
---|---|---|
#1 | M/65 | RBC: 5.1 mil/μL (4.5–5.9 mil/μL); HB: 14.0 g/dL (13.5–17.5 g/dL); HCT: 42% (41–50%); MCV: 82 fL (80–100 fL); MCH: 28 pg (27–33 pg); MCHC: 34 g/dL (32–36 g/dL); WBC: 7.2 mil/μL (4.5–11.0 mil/μL); Neutrophils: 55% (40–60%); Lymphocytes: 35% (20–40%); Monocytes: 7% (2–8%); Eosinophils: 2% (1–4%); Basophils: 1% (0–1%); Glucose: 55 mg/dL (70–99 mg/dL); HbA1c: 8.2% (<6.5%); Total Cholesterol: 270 mg/dL (<200 mg/dL); LDL Cholesterol: 180 mg/dL (<100 mg/dL); Triglycerides: 220 mg/dL (<150 mg/dL); Creatinine: 1.3 mg/dL (0.7–1.2 mg/dL); Ferritin: 10 ng/mL (20–250 ng/mL); GGT: 30 U/L (8–61 U/L) |
#2 (a) | F/35 | AST: 2 U/L (10–40 U/L); ALT: 9 U/L (7–56 U/L); GGT: 8 U/L (8–38 U/L); Serum iron: 27 mcg/dL (60–170 mcg/dL); Ferritin: 29 ng/mL (15–150 ng/mL); Folic Acid: 2.4 ng/mL (>3.0 ng/mL); Homocysteine: 43 μmol/L (<12 μmol/L); Vit D3: 24 ng/L (30–100 ng/L); Vit B12: 314 pg/mL (200–900 pg/mL); HDL Cholesterol: 64 mg/dL (>50 mg/dL); LDL Cholesterol: 37 mg/dL (<100 mg/dL); Total Cholesterol: 114 mg/dL (<200 mg/dL); Triglycerides: 66 mg/dL (<150 mg/dL); eGFR: 78.58 mL/min/1.73 m2 (>90 mL/min/1.73 m2); BUN: 43 mg/dL (7–20 mg/dL) |
#2 (b) | F/35 | RBC: 4.03 mil/μL (3.8–5.2 mil/μL); HB: 10.2 g/dL (12.0–15.5 g/dL); HCT: 32.6% (36–46%); MCV: 80.9 fL (80–100 fL); MCH: 25.3 pg (27–33 pg); MCHC: 31.3 g/dL (32–36 g/dL); WBC: 4.5 mil/μL (4.5–11.0 mil/μL); PLT: 278 × 103/uL (150–450 × 103/uL); Neutrophils: 55% (40–60%); Lymphocytes: 37% (20–40%); Monocytes: 6.3% (2–8%); Eosinophils: 1.1% (1–4%); Basophils: 0.4% (0–1%); Serum iron: 27 mcg/dL (60–170 mcg/dL); Ferritin: 26.6 ng/mL (15–150 ng/mL); Folic Acid: >20 ng/mL (>3.0 ng/mL); Homocysteine: 16.2 μmol/L (<12 μmol/L) |
#3 | M/54 | Albumin: 56.61% (55–65%); Alpha 1: 3.62% (2.5–5%); Alpha 2: 9.14% (7–13%); Beta 1: 8.76% (7–14%); Beta 2: 5.36% (2–7%); Gamma: 16.5% (11–21%); A/G Ratio: 1.30 (1.2–2.2); Total Proteins: 7 g/dL (6.4–8.3 g/dL); Ferritin: 424 ng/mL (20–250 ng/mL); Serum Iron: 116 mcg/dL (65–175 mcg/dL); Gamma GT: 29 U/dL (8–61 U/L); ESR: 2 mm/h (0–15 mm/h); CRP: 0.9 mg/dL (<1.0 mg/dL); AST: 19 u/dL (10–40 U/L); ALT: 19 u/dL (7–56 U/L); Total Cholesterol: 233 mg/dL (<200 mg/dL); Triglycerides: 104 mg/dL (<150 mg/dL); HDL Cholesterol: 72 mg/dL (>40 mg/dL); Uric Acid: 5.9 mg/mL (3.4–7.0 mg/dL); Creatinine: 1.07 mg/dL (0.7–1.2 mg/dL); BUN: 24 mg/dL (7–20 mg/dL); Glucose: 103 mg/dL (70–99 mg/dL); WBC: 8.91 × 103/uL (4.5–11.0 × 103/uL); RBC: 5.61 × 106/uL (4.5–5.9 × 106/uL); Hb: 16 g/dL (13.5–17.5 g/dL); HCT: 47% (41–50%); PLT: 227 × 103/uL (150–450 × 103/uL); Urine Test: yellow (yellow to amber); pH: 5 (4.5–8.0); |
#4 | F/50 | WBC: 11.2 × 109/L (4.5–11.0 × 109/L); RBC: 4.1 × 1012/L (3.8–5.2 × 1012/L); Hemoglobin: 11.8 g/dL (12.0–15.5 g/dL); Hematocrit: 35% (36–46%); MCV: 85 fL (80–100 fL); MCH: 28.8 pg (27–33 pg); MCHC: 33.7 g/dL (32–36 g/dL); Platelets: 385 × 109/L (150–450 × 109/L); Glucose: 105 mg/dL (70–99 mg/dL); BUN: 25 mg/dL (7–20 mg/dL); Creatinine: 1.3 mg/dL (0.6–1.1 mg/dL); eGFR: 58 mL/min/1.73 m2 (>90 mL/min/1.73 m2); Sodium: 141 mEq/L (135–145 mEq/L); Potassium: 3.4 mEq/L (3.5–5.0 mEq/L); Chloride: 102 mEq/L (98–107 mEq/L); CO2: 25 mEq/L (23–29 mEq/L) |
#5 | F/8 | WBC: 6.00 103/uL (4.5–13.5 103/uL); RBC: 4.28 106/uL (4.0–5.2 106/uL); Hb: 13.2 g/dL (11.5–15.5 g/dL); HCT: 37.9% (35–45%); MCV: 88.4 fL (77–95 fL); MCH: 30.9 pg (25–33 pg); MCHC: 34.9 g/dL (31–37 g/dL); RDW: 12.3% (11.5–14.5%); PLT: 274 103/uL (150–450 103/uL); glucose: 85 mg/dL (70–100 mg/dL); HbA1c: 5.0% (<5.7%); IFCC: 31 mmol/mol (<39 mmol/mol); cholesterol: 196 mg/dL (<170 mg/dL); HDL: 71 mg/dL (>45 mg/dL); serum total protein: 7.4 g/dL (6.0–8.0 g/dL); sodium: 139 mEq/L (135–145 mEq/L); potassium: 4.5 mEq/L (3.5–5.1 mEq/L); AST/GOT: 31 UI/L (15–40 UI/L); ALT/GPT: 15 UI/L (10–35 UI/L); albumin %: 57.7% (55–65%); alpha-1%: 5.1% (2.5–5%); alpha-2 Globulin %: 12.3% (7–13%); beta 1-globulin %: 5.3% (7–14%); beta 2-globulin %: 4.3% (2–7%); gamma globulin %: 15.3% (11–21%); Ratio albumin/globulin: 1.36 (1.2–2.2); TSH: 1.56 mUI/L (0.7–5.7 mUI/L); LH: <0.2 mU/mL (prepubertal: <0.3 mU/mL); FSH: 0.9 mU/mL (prepubertal: <3.0 mU/mL); s-17-beta estradiol: <15 pg/mL (prepubertal: <10 pg/mL); total s-testosterone: <0.1 ng/mL (prepubertal: <0.2 ng/mL); 17-OH-P: 0.9 ng/mL (0.1–1.0 ng/mL); p-ACTH: 18 pg/mL (7–63 pg/mL); s-cortisol: 15.3 ug/dL (5–25 ug/dL) |
#6 | M/30 | RBC: 5.1 mil/μL (4.5–5.9 mil/μL); HB: 14.0 g/dL (13.5–17.5 g/dL); HCT: 42% (41–50%); MCV: 82 fL (80–100 fL); MCH: 28 pg (27–33 pg); MCHC: 34 g/dL (32–36 g/dL); WBC: 7.2 mil/μL (4.5–11.0 mil/μL); Neutrophils: 55% (40–60%); Lymphocytes: 35% (20–40%); Monocytes: 7% (2–8%); Eosinophils: 2% (1–4%); Basophils: 1% (0–1%); Glucose: 55 mg/dL (70–99 mg/dL); HbA1c: 8.2% (<6.5%); Total Cholesterol: 270 mg/dL (<200 mg/dL); LDL Cholesterol: 180 mg/dL (<100 mg/dL); Triglycerides: 220 mg/dL (<150 mg/dL); Creatinine: 1.3 mg/dL (0.7–1.2 mg/dL); Ferritin: 10 ng/mL (20–250 ng/mL); GGT: 30 U/L (8–61 U/L); WBC: 14.91 × 109/L (4.5–11.0 × 109/L); Platelets: 93 × 109/L (150–450 × 109/L); Neutrophils: 11.37 × 109/L (1.8–7.7 × 109/L); AST: 41 U/L (10–40 U/L); ALT: 66 U/L (7–56 U/L) |
Evaluation Criteria | Mean Score (1–5) |
---|---|
Age range | 18–75 years |
Gender | 52% female |
Education levels: | |
High school | 40% |
Bachelor’s degree | 35% |
Graduate degree | 15% |
Other | 10% |
Prior experience with lab results: | |
Frequent | 30% |
Occasional | 45% |
Rare | 25% |
Evaluation Criteria | Mean Score (1–5) |
---|---|
Overall Clarity of AI Interpretations | 4.3 |
Technical Terms Explanation | 4.5 |
Usefulness of Reference Range Context | 4.2 |
Ease of Understanding Results | 4.4 |
Helpfulness for Doctor Discussions | 4.1 |
Theme | Percentage | Representative Patient Comments |
---|---|---|
Improved Understanding | 92% | “Finally I understand what these numbers mean” |
“It’s like having a medical translator” | ||
“I particularly appreciated how the AI explained the relationship between different test results” | ||
Reduced Anxiety | 78% | “The explanations make complex terms accessible” |
“Knowing why a value is high helped reduce my worry” | ||
“The explanations helped me understand that not every ’abnormal’ result is cause for panic.” | ||
Better Physician Consultations | 85% | “Clear explanations made abnormal results less scary” |
“I could ask more informed questions during my visit” | ||
“Helped me prepare better for my doctor’s appointment” | ||
“I felt more confident discussing my results with my doctor because I already had a basic understanding of what they meant.” | ||
“The explanations helped me formulate specific questions for my doctor instead of just general concerns.” |
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Share and Cite
D’Urso, F.; Paladini, F.; Pollini, M.; Broccolo, F. Use of Artificial Intelligence Chatbots in Interpretation of Clinical Chemistry and Laboratory Medicine Reports: A Standardized Approach. Appl. Sci. 2025, 15, 4232. https://doi.org/10.3390/app15084232
D’Urso F, Paladini F, Pollini M, Broccolo F. Use of Artificial Intelligence Chatbots in Interpretation of Clinical Chemistry and Laboratory Medicine Reports: A Standardized Approach. Applied Sciences. 2025; 15(8):4232. https://doi.org/10.3390/app15084232
Chicago/Turabian StyleD’Urso, Fabiana, Federica Paladini, Mauro Pollini, and Francesco Broccolo. 2025. "Use of Artificial Intelligence Chatbots in Interpretation of Clinical Chemistry and Laboratory Medicine Reports: A Standardized Approach" Applied Sciences 15, no. 8: 4232. https://doi.org/10.3390/app15084232
APA StyleD’Urso, F., Paladini, F., Pollini, M., & Broccolo, F. (2025). Use of Artificial Intelligence Chatbots in Interpretation of Clinical Chemistry and Laboratory Medicine Reports: A Standardized Approach. Applied Sciences, 15(8), 4232. https://doi.org/10.3390/app15084232