interpret-nmr-spectrum
Über
Diese Fähigkeit ermöglicht es Claude, NMR-Spektren (1H, 13C, DEPT und 2D-Experimente) zu interpretieren, um Molekülstrukturen zu bestimmen. Sie analysiert chemische Verschiebungen, Kopplungsmuster und spektrale Integrationen, um strukturelle Fragmente vorzuschlagen. Nutzen Sie sie, wenn Sie organische Verbindungsstrukturen aus NMR-Daten aufklären oder bestätigen müssen.
Schnellinstallation
Claude Code
Empfohlennpx 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-spectrumKopieren Sie diesen Befehl und fügen Sie ihn in Claude Code ein, um diese Fähigkeit zu installieren
Dokumentation
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 Repository
Verwandte Skills
llamaguard
AndereLlamaGuard ist Metas 7-8B-Parameter-Modell zur Moderation von LLM-Eingaben und -Ausgaben in sechs Sicherheitskategorien wie Gewalt und Hassrede. Es bietet eine Genauigkeit von 94-95 % und kann mit vLLM, Hugging Face oder Amazon SageMaker eingesetzt werden. Nutzen Sie diese Skill, um Inhaltsfilterung und Sicherheitsguardrails einfach in Ihre KI-Anwendungen zu integrieren.
cost-optimization
AndereDiese Claude Skill unterstützt Entwickler bei der Optimierung von Cloud-Kosten durch Ressourcen-Dimensionierung, Tagging-Strategien und Ausgabenanalysen. Sie bietet einen Rahmen zur Senkung von Cloud-Ausgaben und zur Implementierung von Kosten-Governance für AWS, Azure und GCP. Nutzen Sie sie, wenn Sie Infrastrukturkosten analysieren, Ressourcen richtig dimensionieren oder Budgetvorgaben einhalten müssen.
quantizing-models-bitsandbytes
AndereDiese Fähigkeit quantisiert LLMs auf 8-Bit- oder 4-Bit-Präzision mittels bitsandbytes und erreicht dabei eine Speicherreduzierung von 50–75 % bei minimalem Genauigkeitsverlust. Sie ist ideal für den Betrieb größerer Modelle mit begrenztem GPU-Speicher oder zur Beschleunigung von Inferenzvorgängen und unterstützt Formate wie INT8, NF4 und FP4. Die Fähigkeit integriert sich in HuggingFace Transformers und ermöglicht QLoRA-Training sowie 8-Bit-Optimierer.
dispatching-parallel-agents
AndereDiese Claude-Fähigkeit verteilt mehrere Agenten, um drei oder mehr unabhängige Probleme gleichzeitig zu untersuchen und zu beheben. Sie ist für Szenarien konzipiert, die unabhängige Fehler umfassen, die ohne gemeinsamen Zustand oder Abhängigkeiten gelöst werden können. Die Kernfähigkeit ist die parallele Problemlösung, bei der pro unabhängigem Problembereich ein Agent zugewiesen wird, um die Effizienz zu maximieren.
