interpret-nmr-spectrum
정보
이 스킬은 Claude가 NMR 스펙트럼(1H, 13C, DEPT 및 2D 실험)을 해석하여 분자 구조를 결정할 수 있게 합니다. 화학적 이동, 결합 패턴 및 스펙트럼 적분 값을 분석하여 구조적 단편을 제안합니다. NMR 데이터로부터 유기 화합물 구조를 해명하거나 확인해야 할 때 사용하세요.
빠른 설치
Claude Code
추천npx skills add pjt222/agent-almanac -a claude-code/plugin add https://github.com/pjt222/agent-almanacgit clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/interpret-nmr-spectrumClaude Code에서 이 명령을 복사하여 붙여넣어 스킬을 설치하세요
문서
Interpret NMR Spectrum
Read 1D and 2D NMR spectra. Assign peaks, determine coupling, propose molecular structural fragments consistent with all observed data.
When Use
- Determine structure of unknown organic compound from NMR data
- Confirm identity and purity of synthesized product
- Assign peaks in complex spectra with overlapping signals
- Correlate multiple NMR experiments (1H, 13C, DEPT, COSY, HSQC, HMBC) into unified structural picture
- Distinguish regioisomers, stereoisomers, conformational isomers
Inputs
- Required: NMR spectrum data (at minimum 1H spectrum with chemical shifts, multiplicities, integration)
- Required: Molecular formula or molecular weight (from mass spectrometry or elemental analysis)
- Optional: 13C and DEPT spectra (chemical shifts and multiplicities)
- Optional: 2D spectra (COSY, HSQC, HMBC, NOESY/ROESY correlation tables)
- Optional: Solvent and field strength used for acquisition
- Optional: Known structural constraints (e.g., reaction starting material, functional groups confirmed by IR)
Steps
Step 1: Assess Spectrum Type and Acquisition Parameters
Establish what data is available, its quality, before interpreting:
- Identify experiment types: Catalog which spectra available (1H, 13C, DEPT-135, DEPT-90, COSY, HSQC, HMBC, NOESY, ROESY, TOCSY). Note nucleus observed and dimensionality
- Record acquisition parameters: Spectrometer frequency (e.g., 400 MHz, 600 MHz), solvent, temperature, reference standard
- Identify solvent and reference peaks: Locate and exclude solvent signals using reference table:
| Solvent | 1H Residual (ppm) | 13C Signal (ppm) |
|---|---|---|
| CDCl3 | 7.26 | 77.16 |
| DMSO-d6 | 2.50 | 39.52 |
| D2O | 4.79 | -- |
| CD3OD | 3.31 | 49.00 |
| Acetone-d6 | 2.05 | 29.84, 206.26 |
| C6D6 | 7.16 | 128.06 |
- Assess spectral quality: Check baseline flatness, resolution of multiplets, signal-to-noise. Flag any artifacts (spinning sidebands, 13C satellites, solvent impurity peaks like H2O at ~1.56 ppm in CDCl3)
Got: Complete inventory of available experiments. Solvent/reference peaks excluded from analysis. Quality assessment.
If fail: Poor signal-to-noise or severe baseline distortion? Note limitation, proceed with caution. Flag any peaks not reliably distinguishable from noise.
Step 2: Analyze 1H Chemical Shifts
Assign each 1H signal to chemical environment using characteristic shift ranges:
- Tabulate all signals: For each peak, record chemical shift (ppm), multiplicity, coupling constant(s) J (Hz), relative integration
- Classify by chemical shift region:
| Range (ppm) | Environment | Examples |
|---|---|---|
| 0.0--0.5 | Shielded (cyclopropane, M-H) | Cyclopropyl H, metal hydrides |
| 0.5--2.0 | Alkyl (CH3, CH2, CH) | Saturated aliphatic chains |
| 2.0--4.5 | Alpha to heteroatom/unsaturation | -OCH3, -NCH2, allylic, benzylic |
| 4.5--6.5 | Vinyl / olefinic | =CH-, =CH2 |
| 6.5--8.5 | Aromatic | ArH |
| 9.0--10.0 | Aldehyde | -CHO |
| 10.0--12.0 | Carboxylic acid | -COOH |
| 0.5--5.0 (broad, exchangeable) | OH, NH | Alcohols, amines, amides |
- Count hydrogens: Use integration ratios relative to molecular formula to assign number of protons per signal. Normalize to simplest whole-number ratio
- Note exchangeable protons: Signals disappearing on D2O shake (OH, NH, COOH) are exchangeable. Record presence and approximate shift
Got: Table of all 1H signals with shift, multiplicity, J-values, integration (number of H), preliminary environment assignment.
If fail: Integration ratios not summing to expected total protons? Check for overlapping signals, broad peaks hidden in baseline, or incorrect molecular formula.
Step 3: Determine Coupling Patterns and J-Values
Extract connectivity info from splitting patterns:
- Identify multiplicities: Assign each signal as singlet (s), doublet (d), triplet (t), quartet (q), doublet of doublets (dd), etc. For complex multiplets (m), estimate number of coupling partners
- Measure coupling constants: Extract J-values in Hz. Match reciprocal couplings (if H_A couples to H_B with J = 7.2 Hz, H_B must show same J to H_A)
- Classify J-values by type:
| J Range (Hz) | Coupling Type |
|---|---|
| 0--3 | Geminal (2J) or long-range (4J, 5J) |
| 6--8 | Vicinal aliphatic (3J) |
| 8--10 | Vicinal with restricted rotation |
| 10--17 | Vicinal olefinic cis (6--12) or trans (12--18) |
| 0--3 | Aromatic meta |
| 6--9 | Aromatic ortho |
- Map coupling networks: Group mutually coupled protons into spin systems. Each spin system = connected fragment of molecule
- Assess roof effect: In AB-type patterns, inner lines of doublets more intense than outer → chemical shift proximity
Got: All coupling constants measured and matched reciprocally. Spin systems identified. Coupling types classified.
If fail: Multiplets too complex for first-order rules? Note higher-order pattern. Overlapping signals or strongly coupled nuclei (delta-nu/J < 10) make non-first-order patterns needing simulation.
Step 4: Analyze 13C and DEPT Data
Determine carbon types and count from 13C experiments:
- Count distinct carbon signals: Compare number of 13C peaks vs molecular formula. Fewer peaks than expected = molecular symmetry
- Classify by chemical shift:
| Range (ppm) | Carbon Type | Examples |
|---|---|---|
| 0--50 | sp3 Alkyl | CH3, CH2, CH, quaternary C |
| 50--100 | Alpha to O or N | -OCH3, -OCH2, anomeric C |
| 100--150 | Aromatic / vinyl | =CH-, ArC |
| 150--170 | Heteroaromatic / enol / imine | C=N, C-O aromatic |
| 170--185 | Carboxyl / ester / amide | -COOH, -COOR, -CONR2 |
| 185--220 | Aldehyde / ketone | -CHO, >C=O |
- Apply DEPT editing: Use DEPT-135 (CH and CH3 up, CH2 down, quaternary absent) and DEPT-90 (CH only) to determine number of attached hydrogens per carbon
- Calculate degree of unsaturation: DBE = (2C + 2 + N - H - X) / 2. Compare with count of pi bonds and rings implied by spectrum
Got: Every 13C signal classified by type (CH3, CH2, CH, C) and chemical environment. Degree of unsaturation calculated, consistent with observed functional groups.
If fail: DEPT data unavailable? Infer hydrogen attachment from HSQC correlations (Step 5). Carbon count does not match molecular formula? Check for coincident signals or quaternary carbons hidden in noise.
Step 5: Correlate 2D NMR Data
Build connectivity using two-dimensional experiments:
- COSY (1H-1H correlation): Identify which protons are 2-3 bonds apart. Map cross-peaks to confirm and extend spin systems from Step 3
- HSQC (1H-13C one-bond): Assign each proton to directly bonded carbon. Links 1H and 13C assignments unambiguously
- HMBC (1H-13C long-range): Identify 2-3 bond H-C correlations. HMBC critical for connecting fragments across quaternary carbons, heteroatoms, carbonyl groups lacking direct H-C bonds
- NOESY/ROESY (through-space): Identify protons spatially close (< 5 Angstroms) regardless of bonding. Use for stereochemical assignment and conformational analysis
- Build fragment connectivity: Use HMBC correlations to connect spin systems from COSY into larger fragments. Each HMBC cross-peak = 2-3 bond path from H to C
Got: Connectivity map linking all spin systems into coherent molecular framework, with stereochemical info from NOE data where available.
If fail: 2D data incomplete or ambiguous? Note which connections are tentative. Multiple structural proposals may be necessary. Prioritize HMBC correlations for fragment assembly — bridges gaps COSY cannot.
Step 6: Propose and Validate Structure
Assemble fragments into complete structural proposal:
- Assemble fragments: Connect structural fragments from Steps 2-5 using HMBC correlations and degree-of-unsaturation constraints
- Check molecular formula: Verify proposed structure matches molecular formula exactly (atom count, degree of unsaturation)
- Back-predict chemical shifts: For proposed structure, predict expected 1H and 13C chemical shifts. Compare with observed. Deviations > 0.3 ppm (1H) or > 5 ppm (13C) warrant re-examination
- Verify all correlations: Confirm every observed COSY, HSQC, HMBC correlation explained by proposed structure. Unexplained cross-peaks = error or impurity
- Consider alternatives: Multiple structures fit the data? List distinguishing experiments or correlations that would resolve ambiguity
- Assign stereochemistry: Use NOE data, J-value analysis (Karplus relationship for dihedral angles), known conformational preferences to assign relative and, where possible, absolute stereochemistry
Got: Single best-fit structural proposal with all NMR data accounted for, or ranked list of candidates with plan to distinguish them.
If fail: No single structure accounts for all data? Check for: mixture of compounds (extra peaks with non-integer integration ratios), dynamic processes (broad peaks from conformational exchange), paramagnetic impurities (anomalous broadening). Re-examine molecular formula if multiple structures remain equally viable.
Checks
- All solvent and reference peaks identified and excluded from interpretation
- Every 1H signal assigned chemical shift region, multiplicity, J-value, integration
- Coupling constants reciprocal (matched between coupling partners)
- 13C signals classified by DEPT multiplicity and chemical shift region
- Degree of unsaturation calculated and consistent with proposed structure
- 2D correlations (COSY, HSQC, HMBC) all explained by structural proposal
- Proposed structure matches molecular formula exactly
- Back-predicted chemical shifts agree with observed values within tolerance
- Stereochemistry addressed using NOE and/or J-value analysis where applicable
Pitfalls
- Ignoring solvent peaks: Common solvents make signals overlapping analyte peaks. Always identify and exclude solvent residuals, water, grease peaks before interpretation.
- Forcing first-order analysis on second-order patterns: Strongly coupled nuclei (small chemical shift difference relative to J) make distorted multiplets not interpretable with simple n+1 rules. Recognize roof effects and non-binomial intensity patterns as indicators.
- Overlooking exchangeable protons: OH and NH signals may be broad, shifted by concentration/temperature, or absent in protic solvents. D2O shake experiment clarifies which signals exchangeable.
- Assuming all 13C peaks visible: Quaternary carbons have long relaxation times and low intensity. May be absent from short-acquisition spectra. HMBC correlations often only way to detect them.
- Misinterpret HMBC artifacts: HMBC spectra can show one-bond artifacts (misassigned as long-range correlations) and weak four-bond correlations. Cross-check with HSQC to filter out one-bond leakthrough.
- Neglect symmetry: Observed number of 13C peaks fewer than molecular formula predicts? Molecule likely has symmetry element. Account for this before proposing structure.
See Also
interpret-ir-spectrum— identify functional groups to constrain NMR-based structure proposalsinterpret-mass-spectrum— determine molecular formula and fragmentation for cross-validationinterpret-uv-vis-spectrum— characterize chromophores and conjugation extentinterpret-raman-spectrum— complementary vibrational data for symmetric modesplan-spectroscopic-analysis— select and sequence spectroscopic techniques before data acquisition
GitHub 저장소
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